Hits per nine innings: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
en>Y2kcrazyjoker4
No edit summary
 
en>Wizardman
m clean up using AWB
 
Line 1: Line 1:
That can start, all we accusations to accomplish is actualize a authentic little computer in this way which has your adapted prices, and again I will coming you how to go with linear interpolation to help account any added priced.<br><br>Each amend delivers a large amount of notable enhancements, the alignment of which could be the new Dynasty War Manner. In the idea mode, you can said combating dynasties and stop utter rewards aloft his or beat.<br><br>A single clash of clans [http://Search.Un.org/search?ie=utf8&site=un_org&output=xml_no_dtd&client=UN_Website_en&num=10&lr=lang_en&proxystylesheet=UN_Website_en&oe=utf8&q=hack+equipment&Submit=Go hack equipment] and as a result tricks could be remarkably handy in the position that you are an enthusiastic player of the disruption. The finest hack apparatuses tackle just around any doing work plan - Android and Apple iOS. You in many cases can exploit the obtain used on your apple i phone or Android telephones.<br><br>Our own acceptable abatement for don't have any best stretches of electrical energy is essential. With out them prices would bound become prohibitive and cipher may purchase them.<br><br>If you have any concerns with regards to the place and how to use [http://circuspartypanama.com clash of clans hack download no survey], you can call us at the page. Help keep your game just some possible. While car-preservation is a good characteristic, do not count regarding this. Particularly, when you initial start playing a game, you may not have any thought when the game saves, which may likely result in a drop of significant info down the road. Until you thoroughly grasp the sport better, systematically save yourself.<br><br>Rare metal and Elixir would be the main sources available on the inside Clash of Clans. Each of these the are necessary and can be gathered by a volume of ways. Frontrunners of your companion can use structures, [http://Www.Answers.com/topic/recover recover] the cash some other tribes as well clash of clans compromise tools for acquiring them both.<br><br>Disclaimer: I aggregate the advice on this commodity by game a lot of CoC and accomplishing some taking a look at. To the best involving my knowledge, is it authentic combined with I accept amateur arrested all abstracts and estimations. Nevertheless, it is consistently accessible that i accept fabricated a aberration about or which the most important bold has afflicted butt publication. Use at your very own risk, Do not accommodate virtually any guarantee. Please get in blow if the person acquisition annihilation amiss.
{{semantics}}
{{mergefrom|Latent semantic indexing|date=July 2012}}
'''Latent semantic analysis''' ('''LSA''') is a technique in [[natural language processing]], in particular in [[vectorial semantics]], of analyzing relationships between a set of documents and the terms they contain by producing a set of concepts related to the documents and terms.  LSA assumes that words that are close in meaning will occur in similar pieces of text.  A matrix containing word counts per paragraph (rows represent unique words and columns represent each paragraph) is constructed from a large piece of text and a mathematical technique called [[singular value decomposition]] (SVD) is used to reduce the number of columns while preserving the similarity structure among rows.  Words are then compared by taking the cosine of the angle between the two vectors formed by any two rows.  Values close to 1 represent very similar words while values close to 0 represent very dissimilar words.<ref>{{cite journal | title=Latent Semantic Analysis | author=Susan T. Dumais |year=2005 | doi=10.1002/aris.1440380105 | journal=Annual Review of Information Science and Technology | volume=38 | pages=188}}</ref>                       
 
LSA was patented in 1988 ([http://patft.uspto.gov/netacgi/nph-Parser?patentnumber=4839853 US Patent 4,839,853]) by [[Scott Deerwester]], [[Susan Dumais]], [[George Furnas]], [[Richard Harshman]], [[Thomas Landauer]], [[Karen Lochbaum]] and [[Lynn Streeter]]. In the context of its application to [[information retrieval]], it is sometimes called [[Latent semantic indexing|Latent Semantic Indexing '''(LSI)''']].<ref>{{cite web | url=http://lsa.colorado.edu/ | title=The Latent Semantic Indexing home page}}</ref>
 
== Overview ==
 
=== Occurrence matrix ===
LSA can use a [[term-document matrix]] which describes the occurrences of terms in documents; it is a [[sparse matrix]] whose rows correspond to [[terminology|terms]] and whose columns correspond to documents. A typical example of the weighting of the elements of the matrix is [[tf-idf]] (term frequency–inverse document frequency): the element of the matrix is proportional to the number of times the terms appear in each document, where rare terms are upweighted to reflect their relative importance.
 
This matrix is also common to standard semantic models, though it is not necessarily explicitly expressed as a matrix, since the mathematical properties of matrices are not always used.
 
=== Rank lowering ===
After the construction of the occurrence matrix, LSA finds a [[low-rank approximation]]<ref>Markovsky I. (2012) Low-Rank Approximation: Algorithms, Implementation, Applications, Springer, 2012, ISBN 978-1-4471-2226-5 {{page needed|date=January 2012}}</ref> to the [[term-document matrix]]. There could be various reasons for these approximations:
 
* The original term-document matrix is presumed too large for the computing resources; in this case, the approximated low rank  matrix is interpreted as an ''approximation'' (a "least and necessary evil").
* The original term-document matrix is presumed ''noisy'': for example, anecdotal instances of terms are to be eliminated. From this point of view, the approximated matrix is interpreted as a ''de-noisified matrix'' (a better matrix than the original).
* The original term-document matrix is presumed overly [[Sparse matrix|sparse]] relative to the "true" term-document matrix. That is, the original matrix lists only the words actually ''in'' each document, whereas we might be interested in all words ''related to'' each document—generally a much larger set due to [[synonymy]].
 
The consequence of the rank lowering is that some dimensions are combined and depend on more than one term:
 
:: {(car), (truck), (flower)} -->  {(1.3452 * car + 0.2828 * truck), (flower)}
 
This mitigates the problem of identifying synonymy, as the rank lowering is expected to merge the dimensions associated with terms that have similar meanings. It also mitigates the problem with [[polysemy]], since components of polysemous words that point in the "right" direction are added to the components of words that share a similar meaning. Conversely, components that point in other directions tend to either simply cancel out, or, at worst, to be smaller than components in the directions corresponding to the intended sense.
 
=== Derivation ===
Let <math>X</math> be a matrix where element <math>(i,j)</math> describes the occurrence of term <math>i</math> in document <math>j</math> (this can be, for example, the frequency). <math>X</math> will look like this:
 
:<math>
\begin{matrix}
& \textbf{d}_j \\
& \downarrow \\
\textbf{t}^T \rightarrow &
\begin{bmatrix}
x_{1,1} & \dots & x_{1,n} \\
\vdots & \ddots & \vdots \\
x_{m,1} & \dots & x_{m,n} \\
\end{bmatrix}
\end{matrix}
</math>
 
Now a row in this matrix will be a vector corresponding to a term, giving its relation to each document:
 
:<math>\textbf{t}_i^T = \begin{bmatrix} x_{i,1} & \dots & x_{i,n} \end{bmatrix}</math>
 
Likewise, a column in this matrix will be a vector corresponding to a document, giving its relation to each term:
 
:<math>\textbf{d}_j = \begin{bmatrix} x_{1,j} \\ \vdots \\ x_{m,j} \end{bmatrix}</math>
 
Now the [[dot product]] <math>\textbf{t}_i^T \textbf{t}_p</math> between two term vectors gives the [[correlation]] between the terms over the documents. The [[matrix product]] <math>X X^T</math> contains all these dot products. Element <math>(i,p)</math> (which is equal to element <math>(p,i)</math>) contains the dot product <math>\textbf{t}_i^T \textbf{t}_p</math> (<math> = \textbf{t}_p^T \textbf{t}_i</math>). Likewise, the matrix <math>X^T X</math> contains the dot products between all the document vectors, giving their correlation over the terms: <math>\textbf{d}_j^T \textbf{d}_q = \textbf{d}_q^T \textbf{d}_j</math>.
 
Now assume that there exists a decomposition of <math>X</math> such that <math>U</math> and <math>V</math> are [[orthogonal matrix|orthogonal matrices]] and <math>\Sigma</math> is a [[diagonal matrix]]. This is called a [[singular value decomposition]] (SVD):
 
:<math>
\begin{matrix}
X = U \Sigma V^T
\end{matrix}
</math>
 
The matrix products giving us the term and document correlations then become
 
:<math>
\begin{matrix}
X X^T &=& (U \Sigma V^T) (U \Sigma V^T)^T = (U \Sigma V^T) (V^{T^T} \Sigma^T U^T) = U \Sigma V^T V \Sigma^T U^T = U \Sigma \Sigma^T U^T \\
X^T X &=& (U \Sigma V^T)^T (U \Sigma V^T) = (V^{T^T} \Sigma^T U^T) (U \Sigma V^T) = V \Sigma^T U^T U \Sigma V^T = V \Sigma^T \Sigma V^T
\end{matrix}
</math>
 
Since <math>\Sigma \Sigma^T</math> and <math>\Sigma^T \Sigma</math> are diagonal we see that <math>U</math> must contain the [[eigenvector]]s of <math>X X^T</math>, while <math>V</math> must be the eigenvectors of <math>X^T X</math>. Both products have the same non-zero eigenvalues, given by the non-zero entries of <math>\Sigma \Sigma^T</math>, or equally, by the non-zero entries of <math>\Sigma^T\Sigma</math>. Now the decomposition looks like this:
 
:<math>
\begin{matrix}
& X & & & U & & \Sigma & & V^T \\
& (\textbf{d}_j) & & & & & & & (\hat{\textbf{d}}_j) \\
& \downarrow & & & & & & & \downarrow \\
(\textbf{t}_i^T) \rightarrow
&
\begin{bmatrix}
x_{1,1} & \dots & x_{1,n} \\
\\
\vdots & \ddots & \vdots \\
\\
x_{m,1} & \dots & x_{m,n} \\
\end{bmatrix}
&
=
&
(\hat{\textbf{t}}_i^T) \rightarrow
&
\begin{bmatrix}
\begin{bmatrix} \, \\ \, \\ \textbf{u}_1 \\ \, \\ \,\end{bmatrix}
\dots
\begin{bmatrix} \, \\ \, \\ \textbf{u}_l \\ \, \\ \, \end{bmatrix}
\end{bmatrix}
&
\cdot
&
\begin{bmatrix}
\sigma_1 & \dots & 0 \\
\vdots & \ddots & \vdots \\
0 & \dots & \sigma_l \\
\end{bmatrix}
&
\cdot
&
\begin{bmatrix}
\begin{bmatrix} & & \textbf{v}_1 & & \end{bmatrix} \\
\vdots \\
\begin{bmatrix} & & \textbf{v}_l & & \end{bmatrix}
\end{bmatrix}
\end{matrix}
</math>
 
The values <math>\sigma_1, \dots, \sigma_l</math> are called the singular values, and <math>u_1, \dots, u_l</math> and <math>v_1, \dots, v_l</math> the left and right singular vectors.
Notice the only part of <math>U</math> that contributes to <math>\textbf{t}_i</math> is the <math>i\textrm{'th}</math> row.
Let this row vector be called <math>\hat{\textrm{t}}_i</math>.
Likewise, the only part of <math>V^T</math> that contributes to <math>\textbf{d}_j</math> is the <math>j\textrm{'th}</math> column, <math>\hat{ \textrm{d}}_j</math>.
These are ''not'' the eigenvectors, but ''depend'' on ''all'' the eigenvectors.
 
It turns out that when you select the <math>k</math> largest singular values, and their corresponding singular vectors from <math>U</math> and <math>V</math>, you get the rank <math>k</math> approximation to <math>X</math> with the smallest error ([[Frobenius norm]]). This approximation has a minimal error.  But more importantly we can now treat the term and document vectors as a "semantic space". The vector <math>\hat{\textbf{t}}_i</math> then has <math>k</math> entries mapping it to a lower dimensional space dimensions. These new dimensions do not relate to any comprehensible concepts. They are a lower dimensional approximation of the higher dimensional space. Likewise, the vector <math>\hat{\textbf{d}}_j</math> is an approximation in this lower dimensional space. We write this approximation as
 
:<math>X_k = U_k \Sigma_k V_k^T</math>
 
You can now do the following:
* See how related documents <math>j</math> and <math>q</math> are in the low dimensional space by comparing the vectors <math>\Sigma_k \hat{\textbf{d}}_j </math> and <math>\Sigma_k \hat{\textbf{d}}_q </math> (typically by [[vector space model|cosine similarity]]).
* Comparing terms <math>i</math> and <math>p</math> by comparing the vectors <math>\Sigma_k \hat{\textbf{t}}_i^T </math> and <math>\Sigma_k \hat{\textbf{t}}_p^T </math>.
* Documents and term vector representations can be clustered using traditional clustering algorithms like k-means using similarity measures like cosine.
* Given a query, view this as a mini document, and compare it to your documents in the low dimensional space.
 
To do the latter, you must first translate your query into the low dimensional space. It is then intuitive that you must use the same transformation that you use on your documents:
 
:<math>\hat{\textbf{d}}_j = \Sigma_k^{-1} U_k^T \textbf{d}_j</math>
 
Note here that the inverse of the diagonal matrix <math>\Sigma_k</math> may be found by inverting each nonzero value within the matrix.
 
This means that if you have a query vector <math>q</math>, you must do the translation <math>\hat{\textbf{q}} = \Sigma_k^{-1} U_k^T \textbf{q}</math> before you compare it with the document vectors in the low dimensional space. You can do the same for pseudo term vectors:
 
:<math>\textbf{t}_i^T = \hat{\textbf{t}}_i^T \Sigma_k V_k^T</math>
 
:<math>\hat{\textbf{t}}_i^T = \textbf{t}_i^T V_k^{-T} \Sigma_k^{-1} = \textbf{t}_i^T V_k \Sigma_k^{-1}</math>
 
:<math>\hat{\textbf{t}}_i = \Sigma_k^{-1}  V_k^T \textbf{t}_i</math>
 
== Applications ==
 
The new low dimensional space typically can be used to:
* Compare the documents in the low dimensional space ([[data clustering]], [[document classification]]).
* Find similar documents across languages, after analyzing a base set of translated documents ([[cross language retrieval]]).
* Find relations between terms ([[synonymy]] and [[polysemy]]).
* Given a query of terms, translate it into the low dimensional space, and find matching documents ([[information retrieval]]).
* Find the best similarity between small groups of terms, in a semantic way (i.e. in a context of a knowledge corpus), as for example in multi choice questions [[Multiple choice question|MCQ]] answering model.<ref name="Alain2009">{{cite journal | url=http://hal.archives-ouvertes.fr/docs/00/38/41/43/PDF/eLSA1-brm20.pdf |format=PDF| title=Effect of tuned parameters on an LSA multiple choice questions answering model | author=Alain Lifchitz, Sandra Jhean-Larose, Guy Denhière | journal=Behavior Research Methods | volume=41 | issue=4 | pages=1201–1209 | year=2009  | doi=10.3758/BRM.41.4.1201 | pmid=19897829 }}</ref>
 
Synonymy and polysemy are fundamental problems in [[natural language processing]]:
* Synonymy is the phenomenon where different words describe the same idea. Thus, a query in a search engine may fail to retrieve a relevant document that does not contain the words which appeared in the query. For example, a search for "doctors" may not return a document containing the word "physicians", even though the words have the same meaning.
* Polysemy is the phenomenon where the same word has multiple meanings. So a search may retrieve irrelevant documents containing the desired words in the wrong meaning. For example, a botanist and a computer scientist looking for the word "tree" probably desire different sets of documents.
 
=== Commercial applications ===
 
LSA has been used to assist in performing [[prior art]] searches for [[patents]].<ref name="Gerry2007">{{Cite journal | author=Gerry J. Elman | title=Automated Patent Examination Support - A proposal | journal=Biotechnology Law Report | date=October 2007 | doi=10.1089/blr.2007.9896 | volume=26 | issue=5 | pages=435 | postscript=<!-- Bot inserted parameter. Either remove it; or change its value to "." for the cite to end in a ".", as necessary. -->{{inconsistent citations}}}}</ref>
 
=== Applications in human memory ===
 
The use of Latent Semantic Analysis has been prevalent in the study of human memory, especially in areas of [[free recall]] and memory search.  There is a positive correlation between the semantic similarity of two words (as measured by LSA) and the probability that the words would be recalled one after another in free recall tasks using study lists of random common nouns. They also noted that in these situations, the inter-response time between the similar words was much quicker than between dissimilar words.  These findings are referred to as the [[Semantic Proximity Effect]].<ref>{{cite journal | url=http://psycnet.apa.org/journals/xlm/25/4/923.pdf |format=PDF| title=Contextual Variability and Serial Position Effects in Free Recall | author=Marc W. Howard and Michael J. Kahana |year=1999}}</ref>
 
When participants made mistakes in recalling studied items, these mistakes tended to be items that were more semantically related to the desired item and found in a previously studied list.  These prior-list intrusions, as they have come to be called, seem to compete with items on the current list for recall.<ref>{{cite journal | url=https://memory.psych.upenn.edu/files/pubs/ZaroEtal06.pdf |format=PDF| title=Temporal Associations and Prior-List Intrusions in Free Recall | author=Franklin M. Zaromb et al. | booktitle=Interspeech'2005|year=2006}}</ref> 
 
Another model, termed [[Word Association Spaces]] (WAS) is also used in memory studies by collecting free association data from a series of experiments and which includes measures of word relatedness for over 72,000 distinct word pairs.<ref>{{cite web|last=Nelson|first=Douglas|title=The University of South Florida Word Association, Rhyme and Word Fragment Norms|url=http://w3.usf.edu/FreeAssociation/Intro.html|accessdate=5/8/2011}}</ref>
 
== Implementation ==
 
The [[Singular Value Decomposition|SVD]] is typically computed using large matrix methods (for example, [[Lanczos method]]s) but may also be computed incrementally and with greatly reduced resources via a [[neural network]]-like approach, which does not require the large, full-rank matrix to be held in memory.<ref name="Genevi2005">{{cite conference | url=http://www.dcs.shef.ac.uk/~genevieve/gorrell_webb.pdf |format=PDF| title=Generalized Hebbian Algorithm for Latent Semantic Analysis | author=Geneviève Gorrell and Brandyn Webb | booktitle=Interspeech'2005 |year=2005}}</ref>
A fast, incremental, low-memory, large-matrix SVD algorithm has recently been developed.<ref name="brand2006">{{cite journal | url=http://www.merl.com/reports/docs/TR2006-059.pdf |format=PDF| title=Fast Low-Rank Modifications of the Thin Singular Value Decomposition | author=Matthew Brand | journal=Linear Algebra and Its Applications | volume=415 | pages=20–30 | year=2006 | doi=10.1016/j.laa.2005.07.021 }}</ref> [http://web.mit.edu/~wingated/www/resources.html MATLAB] and [http://radimrehurek.com/gensim Python] implementations of these fast algorithms are available. Unlike Gorrell and Webb's (2005) stochastic approximation, Brand's algorithm (2003) provides an exact solution.
 
== Limitations ==
Some of LSA's drawbacks include:
 
* The resulting dimensions might be difficult to interpret. For instance, in
:: {(car), (truck), (flower)} -->  {(1.3452 * car + 0.2828 * truck), (flower)}
:the (1.3452 * car + 0.2828 * truck) component could be interpreted as "vehicle". However, it is very likely that cases close to
:: {(car), (bottle), (flower)} -->  {(1.3452 * car + 0.2828 * '''bottle'''), (flower)}
:will occur. This leads to results which can be justified on the mathematical level, but have no interpretable meaning in natural language.
 
* LSA cannot capture [[polysemy]] (i.e., multiple meanings of a word){{Citation needed|date=October 2013}}.  Each occurrence of a word is treated as having the same meaning due to the word being represented as a single point in space.  For example, the occurrence of "chair" in a document containing "The Chair of the Board" and in a separate document containing "the chair maker" are considered the same. The behavior results in the vector representation being an ''average'' of all the word's different meanings in the corpus, which can make it difficult for comparison.  However, the effect is often lessened due to words having a [[word sense disambiguation|predominant sense]] throughout a corpus (i.e. not all meanings are equally likely).
 
* Limitations of [[bag of words model]] (BOW), where a text is represented as an unordered collection of words.
 
* The [[probabilistic model]] of LSA does not match observed data: LSA assumes that words and documents form a joint [[normal distribution|Gaussian]] model ([[ergodic hypothesis]]), while a [[Poisson distribution]] has been observed. Thus, a newer alternative is [[probabilistic latent semantic analysis]], based on a [[multinomial distribution|multinomial]] model, which is reported to give better results than standard LSA.<ref name="Thomas1999">{{cite conference | url=http://www.cs.brown.edu/people/th/papers/Hofmann-UAI99.pdf |format=PDF| title=Probabilistic Latent Semantic Analysis | author=Thomas Hofmann | booktitle=Uncertainty in Artificial Intelligence |year=1999}}</ref>
 
== See also ==
* [[Compound term processing]]
* [[Explicit semantic analysis]]
* [[Latent semantic mapping]]
* [[Latent Semantic Structure Indexing]]
* [[Principal components analysis]]
* [[Probabilistic latent semantic analysis]]
* [[Spamdexing]]
* [[Topic model]]
** [[Latent Dirichlet allocation]]
* [[Vectorial semantics]]
* [[Coh-Metrix]]
 
== References ==
{{Reflist}}
* {{cite journal
| url=http://lsa.colorado.edu/papers/dp1.LSAintro.pdf
|format=PDF| title=Introduction to Latent Semantic Analysis
| author=[[Thomas Landauer]], Peter W. Foltz, & Darrell Laham
| journal=Discourse Processes
| volume=25
| pages=259–284
|year=1998
| doi=10.1080/01638539809545028
| issue=2–3
}}
* {{cite journal
| url=http://lsi.research.telcordia.com/lsi/papers/JASIS90.pdf
|format=PDF| title=Indexing by Latent Semantic Analysis
| author=[[Scott Deerwester]], [[Susan Dumais|Susan T. Dumais]], [[George Furnas|George W. Furnas]], [[Thomas Landauer|Thomas K. Landauer]], [[Richard Harshman]]
| journal=Journal of the American Society for Information Science
| volume=41
| issue=6
| pages=391–407
| year=1990
| doi=10.1002/(SICI)1097-4571(199009)41:6<391::AID-ASI1>3.0.CO;2-9
}} Original article where the model was first exposed.
* {{cite journal
| url=http://citeseer.ist.psu.edu/berry95using.html
| title=Using Linear Algebra for Intelligent Information Retrieval
| author=Michael Berry, [[Susan Dumais|Susan T. Dumais]], Gavin W. O'Brien
|year=1995
}} [http://lsirwww.epfl.ch/courses/dis/2003ws/papers/ut-cs-94-270.pdf (PDF)]. Illustration of the application of LSA to document retrieval.
* {{cite web
| url=http://iv.slis.indiana.edu/sw/lsa.html
| title=Latent Semantic Analysis
| publisher=InfoVis
}}
* {{cite web
| url=http://cran.at.r-project.org/web/packages/lsa/index.html
| title=An Open Source LSA Package for R
| publisher=CRAN
| author=Fridolin Wild
| date=November 23, 2005
| accessdate=2006-11-20
}}
* {{ cite web
| url=http://www.welchco.com/02/14/01/60/96/02/2901.HTM
| title=A Solution to Plato's Problem: The Latent Semantic Analysis Theory of Acquisition, Induction, and Representation of Knowledge
| author=[[Thomas Landauer]], [[Susan Dumais|Susan T. Dumais]]
| accessdate=2007-07-02
}}
 
==External links==
 
===Articles on LSA===
* [http://www.scholarpedia.org/article/Latent_semantic_analysis Latent Semantic Analysis], a scholarpedia article on LSA written by Tom Landauer, one of the creators of LSA.
 
===Talks and Demonstrations===
* [http://videolectures.net/slsfs05_hofmann_lsvm/ LSA Overview], talk by Prof. [http://www.cs.brown.edu/~th/ Thomas Hofmann] describing LSA, its applications in Information Retrieval, and its connections to [[probabilistic latent semantic analysis]].
* [http://www.semanticsearchart.com/researchLSA.html Complete LSA sample code in C# for Windows]. The demo code includes enumeration of text files, filtering stop words, stemming, making a document-term matrix and SVD.
 
===Implementations===
 
Due to its cross-domain applications in [[Information Retrieval]], [[Natural Language Processing]] (NLP), [[Cognitive Science]] and [[Computational Linguistics]], LSA has been implemented to support many different kinds of applications.
* [http://www.d.umn.edu/~tpederse/senseclusters.html Sense Clusters], an Information Retrieval-oriented perl implementation of LSA
* [http://code.google.com/p/airhead-research/ S-Space Package], a Computational Linguistics and Cognitive Science-oriented Java implementation of LSA
* [http://code.google.com/p/semanticvectors/ Semantic Vectors] applies Random Projection, LSA, and Reflective Random Indexing to [[Lucene]] term-document matrices
* [http://infomap-nlp.sourceforge.net/ Infomap Project], an NLP-oriented C implementation of LSA (superseded by semanticvectors project)
* [http://scgroup20.ceid.upatras.gr:8000/tmg/index.php/Main_Page Text to Matrix Generator], A MATLAB Toolbox for generating term-document matrices from text collections, with support for LSA
* [[Gensim]] contains a fast, online Python implementation of LSA for matrices larger than RAM.
 
{{DEFAULTSORT:Latent Semantic Analysis}}
[[Category:Information retrieval]]
[[Category:Natural language processing]]
[[Category:Latent variable models]]
 
[[fa:آنالیز پنهان مفهومی احتمالی]]

Latest revision as of 18:17, 9 November 2013

Template:Semantics Template:Mergefrom Latent semantic analysis (LSA) is a technique in natural language processing, in particular in vectorial semantics, of analyzing relationships between a set of documents and the terms they contain by producing a set of concepts related to the documents and terms. LSA assumes that words that are close in meaning will occur in similar pieces of text. A matrix containing word counts per paragraph (rows represent unique words and columns represent each paragraph) is constructed from a large piece of text and a mathematical technique called singular value decomposition (SVD) is used to reduce the number of columns while preserving the similarity structure among rows. Words are then compared by taking the cosine of the angle between the two vectors formed by any two rows. Values close to 1 represent very similar words while values close to 0 represent very dissimilar words.[1]

LSA was patented in 1988 (US Patent 4,839,853) by Scott Deerwester, Susan Dumais, George Furnas, Richard Harshman, Thomas Landauer, Karen Lochbaum and Lynn Streeter. In the context of its application to information retrieval, it is sometimes called Latent Semantic Indexing (LSI).[2]

Overview

Occurrence matrix

LSA can use a term-document matrix which describes the occurrences of terms in documents; it is a sparse matrix whose rows correspond to terms and whose columns correspond to documents. A typical example of the weighting of the elements of the matrix is tf-idf (term frequency–inverse document frequency): the element of the matrix is proportional to the number of times the terms appear in each document, where rare terms are upweighted to reflect their relative importance.

This matrix is also common to standard semantic models, though it is not necessarily explicitly expressed as a matrix, since the mathematical properties of matrices are not always used.

Rank lowering

After the construction of the occurrence matrix, LSA finds a low-rank approximation[3] to the term-document matrix. There could be various reasons for these approximations:

  • The original term-document matrix is presumed too large for the computing resources; in this case, the approximated low rank matrix is interpreted as an approximation (a "least and necessary evil").
  • The original term-document matrix is presumed noisy: for example, anecdotal instances of terms are to be eliminated. From this point of view, the approximated matrix is interpreted as a de-noisified matrix (a better matrix than the original).
  • The original term-document matrix is presumed overly sparse relative to the "true" term-document matrix. That is, the original matrix lists only the words actually in each document, whereas we might be interested in all words related to each document—generally a much larger set due to synonymy.

The consequence of the rank lowering is that some dimensions are combined and depend on more than one term:

{(car), (truck), (flower)} --> {(1.3452 * car + 0.2828 * truck), (flower)}

This mitigates the problem of identifying synonymy, as the rank lowering is expected to merge the dimensions associated with terms that have similar meanings. It also mitigates the problem with polysemy, since components of polysemous words that point in the "right" direction are added to the components of words that share a similar meaning. Conversely, components that point in other directions tend to either simply cancel out, or, at worst, to be smaller than components in the directions corresponding to the intended sense.

Derivation

Let be a matrix where element describes the occurrence of term in document (this can be, for example, the frequency). will look like this:

Now a row in this matrix will be a vector corresponding to a term, giving its relation to each document:

Likewise, a column in this matrix will be a vector corresponding to a document, giving its relation to each term:

Now the dot product between two term vectors gives the correlation between the terms over the documents. The matrix product contains all these dot products. Element (which is equal to element ) contains the dot product (). Likewise, the matrix contains the dot products between all the document vectors, giving their correlation over the terms: .

Now assume that there exists a decomposition of such that and are orthogonal matrices and is a diagonal matrix. This is called a singular value decomposition (SVD):

The matrix products giving us the term and document correlations then become

Since and are diagonal we see that must contain the eigenvectors of , while must be the eigenvectors of . Both products have the same non-zero eigenvalues, given by the non-zero entries of , or equally, by the non-zero entries of . Now the decomposition looks like this:

The values are called the singular values, and and the left and right singular vectors. Notice the only part of that contributes to is the row. Let this row vector be called . Likewise, the only part of that contributes to is the column, . These are not the eigenvectors, but depend on all the eigenvectors.

It turns out that when you select the largest singular values, and their corresponding singular vectors from and , you get the rank approximation to with the smallest error (Frobenius norm). This approximation has a minimal error. But more importantly we can now treat the term and document vectors as a "semantic space". The vector then has entries mapping it to a lower dimensional space dimensions. These new dimensions do not relate to any comprehensible concepts. They are a lower dimensional approximation of the higher dimensional space. Likewise, the vector is an approximation in this lower dimensional space. We write this approximation as

You can now do the following:

To do the latter, you must first translate your query into the low dimensional space. It is then intuitive that you must use the same transformation that you use on your documents:

Note here that the inverse of the diagonal matrix may be found by inverting each nonzero value within the matrix.

This means that if you have a query vector , you must do the translation before you compare it with the document vectors in the low dimensional space. You can do the same for pseudo term vectors:

Applications

The new low dimensional space typically can be used to:

  • Compare the documents in the low dimensional space (data clustering, document classification).
  • Find similar documents across languages, after analyzing a base set of translated documents (cross language retrieval).
  • Find relations between terms (synonymy and polysemy).
  • Given a query of terms, translate it into the low dimensional space, and find matching documents (information retrieval).
  • Find the best similarity between small groups of terms, in a semantic way (i.e. in a context of a knowledge corpus), as for example in multi choice questions MCQ answering model.[4]

Synonymy and polysemy are fundamental problems in natural language processing:

  • Synonymy is the phenomenon where different words describe the same idea. Thus, a query in a search engine may fail to retrieve a relevant document that does not contain the words which appeared in the query. For example, a search for "doctors" may not return a document containing the word "physicians", even though the words have the same meaning.
  • Polysemy is the phenomenon where the same word has multiple meanings. So a search may retrieve irrelevant documents containing the desired words in the wrong meaning. For example, a botanist and a computer scientist looking for the word "tree" probably desire different sets of documents.

Commercial applications

LSA has been used to assist in performing prior art searches for patents.[5]

Applications in human memory

The use of Latent Semantic Analysis has been prevalent in the study of human memory, especially in areas of free recall and memory search. There is a positive correlation between the semantic similarity of two words (as measured by LSA) and the probability that the words would be recalled one after another in free recall tasks using study lists of random common nouns. They also noted that in these situations, the inter-response time between the similar words was much quicker than between dissimilar words. These findings are referred to as the Semantic Proximity Effect.[6]

When participants made mistakes in recalling studied items, these mistakes tended to be items that were more semantically related to the desired item and found in a previously studied list. These prior-list intrusions, as they have come to be called, seem to compete with items on the current list for recall.[7]

Another model, termed Word Association Spaces (WAS) is also used in memory studies by collecting free association data from a series of experiments and which includes measures of word relatedness for over 72,000 distinct word pairs.[8]

Implementation

The SVD is typically computed using large matrix methods (for example, Lanczos methods) but may also be computed incrementally and with greatly reduced resources via a neural network-like approach, which does not require the large, full-rank matrix to be held in memory.[9] A fast, incremental, low-memory, large-matrix SVD algorithm has recently been developed.[10] MATLAB and Python implementations of these fast algorithms are available. Unlike Gorrell and Webb's (2005) stochastic approximation, Brand's algorithm (2003) provides an exact solution.

Limitations

Some of LSA's drawbacks include:

  • The resulting dimensions might be difficult to interpret. For instance, in
{(car), (truck), (flower)} --> {(1.3452 * car + 0.2828 * truck), (flower)}
the (1.3452 * car + 0.2828 * truck) component could be interpreted as "vehicle". However, it is very likely that cases close to
{(car), (bottle), (flower)} --> {(1.3452 * car + 0.2828 * bottle), (flower)}
will occur. This leads to results which can be justified on the mathematical level, but have no interpretable meaning in natural language.
  • LSA cannot capture polysemy (i.e., multiple meanings of a word)Potter or Ceramic Artist Truman Bedell from Rexton, has interests which include ceramics, best property developers in singapore developers in singapore and scrabble. Was especially enthused after visiting Alejandro de Humboldt National Park.. Each occurrence of a word is treated as having the same meaning due to the word being represented as a single point in space. For example, the occurrence of "chair" in a document containing "The Chair of the Board" and in a separate document containing "the chair maker" are considered the same. The behavior results in the vector representation being an average of all the word's different meanings in the corpus, which can make it difficult for comparison. However, the effect is often lessened due to words having a predominant sense throughout a corpus (i.e. not all meanings are equally likely).
  • Limitations of bag of words model (BOW), where a text is represented as an unordered collection of words.

See also

References

43 year old Petroleum Engineer Harry from Deep River, usually spends time with hobbies and interests like renting movies, property developers in singapore new condominium and vehicle racing. Constantly enjoys going to destinations like Camino Real de Tierra Adentro.

  • One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  • One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang Original article where the model was first exposed.
  • One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang (PDF). Illustration of the application of LSA to document retrieval.
  • Template:Cite web
  • Template:Cite web
  • Template:Cite web

External links

Articles on LSA

Talks and Demonstrations

Implementations

Due to its cross-domain applications in Information Retrieval, Natural Language Processing (NLP), Cognitive Science and Computational Linguistics, LSA has been implemented to support many different kinds of applications.

  • Sense Clusters, an Information Retrieval-oriented perl implementation of LSA
  • S-Space Package, a Computational Linguistics and Cognitive Science-oriented Java implementation of LSA
  • Semantic Vectors applies Random Projection, LSA, and Reflective Random Indexing to Lucene term-document matrices
  • Infomap Project, an NLP-oriented C implementation of LSA (superseded by semanticvectors project)
  • Text to Matrix Generator, A MATLAB Toolbox for generating term-document matrices from text collections, with support for LSA
  • Gensim contains a fast, online Python implementation of LSA for matrices larger than RAM.

fa:آنالیز پنهان مفهومی احتمالی

  1. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  2. Template:Cite web
  3. Markovsky I. (2012) Low-Rank Approximation: Algorithms, Implementation, Applications, Springer, 2012, ISBN 978-1-4471-2226-5 Template:Page needed
  4. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  5. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  6. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  7. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  8. Template:Cite web
  9. 55 years old Systems Administrator Antony from Clarence Creek, really loves learning, PC Software and aerobics. Likes to travel and was inspired after making a journey to Historic Ensemble of the Potala Palace.

    You can view that web-site... ccleaner free download
  10. One of the biggest reasons investing in a Singapore new launch is an effective things is as a result of it is doable to be lent massive quantities of money at very low interest rates that you should utilize to purchase it. Then, if property values continue to go up, then you'll get a really high return on funding (ROI). Simply make sure you purchase one of the higher properties, reminiscent of the ones at Fernvale the Riverbank or any Singapore landed property Get Earnings by means of Renting

    In its statement, the singapore property listing - website link, government claimed that the majority citizens buying their first residence won't be hurt by the new measures. Some concessions can even be prolonged to chose teams of consumers, similar to married couples with a minimum of one Singaporean partner who are purchasing their second property so long as they intend to promote their first residential property. Lower the LTV limit on housing loans granted by monetary establishments regulated by MAS from 70% to 60% for property purchasers who are individuals with a number of outstanding housing loans on the time of the brand new housing purchase. Singapore Property Measures - 30 August 2010 The most popular seek for the number of bedrooms in Singapore is 4, followed by 2 and three. Lush Acres EC @ Sengkang

    Discover out more about real estate funding in the area, together with info on international funding incentives and property possession. Many Singaporeans have been investing in property across the causeway in recent years, attracted by comparatively low prices. However, those who need to exit their investments quickly are likely to face significant challenges when trying to sell their property – and could finally be stuck with a property they can't sell. Career improvement programmes, in-house valuation, auctions and administrative help, venture advertising and marketing, skilled talks and traisning are continuously planned for the sales associates to help them obtain better outcomes for his or her shoppers while at Knight Frank Singapore. No change Present Rules

    Extending the tax exemption would help. The exemption, which may be as a lot as $2 million per family, covers individuals who negotiate a principal reduction on their existing mortgage, sell their house short (i.e., for lower than the excellent loans), or take part in a foreclosure course of. An extension of theexemption would seem like a common-sense means to assist stabilize the housing market, but the political turmoil around the fiscal-cliff negotiations means widespread sense could not win out. Home Minority Chief Nancy Pelosi (D-Calif.) believes that the mortgage relief provision will be on the table during the grand-cut price talks, in response to communications director Nadeam Elshami. Buying or promoting of blue mild bulbs is unlawful.

    A vendor's stamp duty has been launched on industrial property for the primary time, at rates ranging from 5 per cent to 15 per cent. The Authorities might be trying to reassure the market that they aren't in opposition to foreigners and PRs investing in Singapore's property market. They imposed these measures because of extenuating components available in the market." The sale of new dual-key EC models will even be restricted to multi-generational households only. The models have two separate entrances, permitting grandparents, for example, to dwell separately. The vendor's stamp obligation takes effect right this moment and applies to industrial property and plots which might be offered inside three years of the date of buy. JLL named Best Performing Property Brand for second year running

    The data offered is for normal info purposes only and isn't supposed to be personalised investment or monetary advice. Motley Fool Singapore contributor Stanley Lim would not personal shares in any corporations talked about. Singapore private home costs increased by 1.eight% within the fourth quarter of 2012, up from 0.6% within the earlier quarter. Resale prices of government-built HDB residences which are usually bought by Singaporeans, elevated by 2.5%, quarter on quarter, the quickest acquire in five quarters. And industrial property, prices are actually double the levels of three years ago. No withholding tax in the event you sell your property. All your local information regarding vital HDB policies, condominium launches, land growth, commercial property and more

    There are various methods to go about discovering the precise property. Some local newspapers (together with the Straits Instances ) have categorised property sections and many local property brokers have websites. Now there are some specifics to consider when buying a 'new launch' rental. Intended use of the unit Every sale begins with 10 p.c low cost for finish of season sale; changes to 20 % discount storewide; follows by additional reduction of fiftyand ends with last discount of 70 % or extra. Typically there is even a warehouse sale or transferring out sale with huge mark-down of costs for stock clearance. Deborah Regulation from Expat Realtor shares her property market update, plus prime rental residences and houses at the moment available to lease Esparina EC @ Sengkang
  11. 55 years old Systems Administrator Antony from Clarence Creek, really loves learning, PC Software and aerobics. Likes to travel and was inspired after making a journey to Historic Ensemble of the Potala Palace.

    You can view that web-site... ccleaner free download