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{{Probability distribution | | |||
name =Hypoexponential| | |||
type =density| | |||
pdf_image =| | |||
cdf_image =| | |||
parameters =<math>\lambda_{1},\dots,\lambda_{k} > 0\,</math> rates ([[real number|real]])| | |||
support =<math>x \in [0; \infty)\!</math>| | |||
pdf =Expressed as a [[phase-type distribution]]<br /><math>-\boldsymbol{\alpha}e^{x\Theta}\Theta\boldsymbol{1}</math><br />Has no other simple form; see article for details| | |||
cdf =Expressed as a phase-type distribution<br /><math>1-\boldsymbol{\alpha}e^{x\Theta}\boldsymbol{1}</math>| | |||
mean =<math>\sum^{k}_{i=1}1/\lambda_{i}\,</math>| | |||
mode =<math>(k-1)/\lambda</math> if <math>\lambda_{k} = \lambda</math>, for all k| | |||
variance =<math>\sum^{k}_{i=1}1/\lambda^2_{i}</math>| | |||
median =<math>\ln(2)\sum^{k}_{i=1}1/\lambda_{i}</math>| | |||
skewness =<math>2(\sum^{k}_{i=1}1/\lambda_{i}^3)/(\sum^{k}_{i=1}1/\lambda_{i}^2)^{3/2}</math>| | |||
kurtosis =no simple closed form| | |||
entropy =| | |||
mgf =<math>\boldsymbol{\alpha}(tI-\Theta)^{-1}\Theta\mathbf{1}</math>| | |||
char =<math>\boldsymbol{\alpha}(itI-\Theta)^{-1}\Theta\mathbf{1}</math>| | |||
}} | |||
In [[probability theory]] the '''hypoexponential distribution''' or the '''generalized [[Erlang distribution]]''' is a [[continuous distribution]], that has found use in the same fields as the Erlang distribution, such as [[queueing theory]], [[teletraffic engineering]] and more generally in [[stochastic processes]]. It is called the hypoexponetial distribution as it has a [[coefficient of variation]] less than one, compared to the [[hyper-exponential distribution]] which has coefficient of variation greater than one and the [[exponential distribution]] which has coefficient of variation of one. | |||
==Overview== | |||
The Erlang distribution is a series of ''k'' exponential distributions all with rate <math>\lambda</math>. The hypoexponential is a series of ''k'' exponential distributions each with their own rate <math>\lambda_{i}</math>, the rate of the <math>i^{th}</math> exponential distribution. If we have ''k'' independently distributed exponential random variables <math>\boldsymbol{X}_{i}</math>, then the random variable, | |||
:<math> | |||
\boldsymbol{X}=\sum^{k}_{i=1}\boldsymbol{X}_{i} | |||
</math> | |||
is hypoexponentially distributed. The hypoexponential has a minimum coefficient of variation of <math>1/k</math>. | |||
===Relation to the phase-type distribution=== | |||
As a result of the definition it is easier to consider this distribution as a special case of the [[phase-type distribution]]. The phase-type distribution is the time to absorption of a finite state [[Markov process]]. If we have a ''k+1'' state process, where the first ''k'' states are transient and the state ''k+1'' is an absorbing state, then the distribution of time from the start of the process until the absorbing state is reached is phase-type distributed. This becomes the hypoexponential if we start in the first 1 and move skip-free from state ''i'' to ''i+1'' with rate <math>\lambda_{i}</math> until state ''k'' transitions with rate <math>\lambda_{k}</math> to the absorbing state ''k+1''. This can be written in the form of a subgenerator matrix, | |||
:<math> | |||
\left[\begin{matrix}-\lambda_{1}&\lambda_{1}&0&\dots&0&0\\ | |||
0&-\lambda_{2}&\lambda_{2}&\ddots&0&0\\ | |||
\vdots&\ddots&\ddots&\ddots&\ddots&\vdots\\ | |||
0&0&\ddots&-\lambda_{k-2}&\lambda_{k-2}&0\\ | |||
0&0&\dots&0&-\lambda_{k-1}&\lambda_{k-1}\\ | |||
0&0&\dots&0&0&-\lambda_{k} | |||
\end{matrix}\right]\; . | |||
</math> | |||
For simplicity denote the above matrix <math>\Theta\equiv\Theta(\lambda_{1},\dots,\lambda_{k})</math>. If the probability of starting in each of the ''k'' states is | |||
:<math> | |||
\boldsymbol{\alpha}=(1,0,\dots,0) | |||
</math> | |||
then <math>Hypo(\lambda_{1},\dots,\lambda_{k})=PH(\boldsymbol{\alpha},\Theta).</math> | |||
==Two parameter case== | |||
Where the distribution has two parameters (<math>\mu_1 \neq \mu_2</math>) the explicit forms of the probability functions and the associated statistics are<ref>{{cite doi|10.1002/0471200581.ch1}}</ref> | |||
CDF: <math>F(x) = 1 - \frac{\mu_2}{\mu_2-\mu_1}e^{-\mu_1x} + \frac{\mu_1}{\mu_2-\mu_1}e^{-\mu_2x}</math> | |||
PDF: <math>f(x) = \frac{\mu_1\mu_2}{\mu_1-\mu_2}( e^{-x \mu_2} - e^{-x \mu_1} )</math> | |||
Mean: <math>\frac{1}{\mu_1}+\frac{1}{\mu_2}</math> | |||
Variance: <math>\frac{1}{\mu_1^2}+\frac{1}{\mu_2^2}</math> | |||
Coefficient of variation: <math>\frac{\sqrt{\mu_1 + \mu_2}}{ \mu_1 + \mu_2 }</math> | |||
The coefficient of variation is always < 1. | |||
Given the sample mean (<math>\bar{x}</math>) and sample coefficient of variation (<math>c</math>) the parameters <math>\mu_1</math> and <math>\mu_2</math> can be estimated: | |||
<math>\mu_1= \frac{ 2}{ \bar{x} } \left[ 1 + \sqrt{ 1 + 2 ( c^2 - 1 ) } \right]^{-1}</math> | |||
<math>\mu_2 = \frac{ 2 }{ \bar{x} } \left[ 1 - \sqrt{ 1 + 2 ( c^2 - 1 ) } \right]^{-1}</math> | |||
==Characterization== | |||
A random variable <math>\boldsymbol{X}\sim Hypo(\lambda_{1},\dots,\lambda_{k})</math> has [[cumulative distribution function]] given by, | |||
:<math> | |||
F(x)=1-\boldsymbol{\alpha}e^{x\Theta}\boldsymbol{1} | |||
</math> | |||
and [[density function]], | |||
:<math> | |||
f(x)=-\boldsymbol{\alpha}e^{x\Theta}\Theta\boldsymbol{1}\; , | |||
</math> | |||
where <math>\boldsymbol{1}</math> is a [[column vector]] of ones of the size ''k'' and <math>e^{A}</math> is the [[matrix exponential]] of ''A''. When <math>\lambda_{i} \ne \lambda_{j}</math> for all <math>i \ne j</math>, the [[density function]] can be written as | |||
:<math> | |||
f(x) = \sum_{i=1}^k \lambda_i e^{-x \lambda_i} \left(\prod_{j=1, j \ne i}^k \frac{\lambda_j}{\lambda_j - \lambda_i}\right) = \sum_{i=1}^k \ell_i(0) \lambda_i e^{-x \lambda_i} | |||
</math> | |||
where <math>\ell_1(x), \dots, \ell_k(x)</math> are the [[Lagrange polynomial|Lagrange basis polynomials]] associated with the points <math>\lambda_1,\dots,\lambda_k</math>. | |||
The distribution has [[Laplace transform]] of | |||
:<math> | |||
\mathcal{L}\{f(x)\}=-\boldsymbol{\alpha}(sI-\Theta)^{-1}\Theta\boldsymbol{1} | |||
</math> | |||
Which can be used to find moments, | |||
:<math> | |||
E[X^{n}]=(-1)^{n}n!\boldsymbol{\alpha}\Theta^{-n}\boldsymbol{1}\; . | |||
</math> | |||
==General case== | |||
In the general case | |||
where there are <math>a</math> distinct sums of exponential distributions | |||
with rates <math>\lambda_1,\lambda_2,\cdots,\lambda_a</math> and a number of terms in each | |||
sum equals to <math>r_1,r_2,\cdots,r_a</math> respectively. The cumulative | |||
distribution function for <math>t\geq0</math> is given by | |||
:<math>F(t) | |||
= 1 - \left(\prod_{j=1}^a \lambda_j^{r_j} \right) | |||
\sum_{k=1}^a \sum_{l=1}^{r_k} | |||
\frac{\Psi_{k,l}(-\lambda_k) t^{r_k-l} \exp(-\lambda_k t)} | |||
{(r_k-l)!(l-1)!} , | |||
</math> | |||
with | |||
:<math>\Psi_{k,l}(x) | |||
= -\frac{\partial^{l-1}}{\partial x^{l-1}} | |||
\left(\prod_{j=0,j\neq k}^a \left(\lambda_j+x\right)^{-r_j} \right) . | |||
</math> | |||
with the additional convention <math>\lambda_0 = 0, r_0 = 1</math>. | |||
==Uses== | |||
This distribution has been used in population genetics<ref name=Strimmer2001>Strimmer K, Pybus OG (2001) "Exploring the demographic history of DNA sequences using the generalized skyline plot", ''Mol Biol Evol'' 18(12):2298-305</ref> and queuing theory<ref name=Calinescu2009>http://www.few.vu.nl/en/Images/stageverslag-calinescu_tcm39-105827.pdf</ref><ref name=Bekker2011>Bekker R, Koeleman PM (2011) "Scheduling admissions and reducing variability in bed demand". ''Health Care Manag Sci'', 14(3):237-249</ref> | |||
==See also== | |||
* [[Phase-type distribution]] | |||
* [[Phase-type distribution#Coxian distribution|Coxian distribution]] | |||
==References== | |||
{{reflist}} | |||
===Additional material=== | |||
* M. F. Neuts. (1981) Matrix-Geometric Solutions in Stochastic Models: an Algorthmic Approach, Chapter 2: Probability Distributions of Phase Type; Dover Publications Inc. | |||
* G. Latouche, V. Ramaswami. (1999) Introduction to Matrix Analytic Methods in Stochastic Modelling, 1st edition. Chapter 2: PH Distributions; ASA SIAM, | |||
* Colm A. O'Cinneide (1999). ''Phase-type distribution: open problems and a few properties'', Communication in Statistic - Stochastic Models, 15(4), 731–757. | |||
* L. Leemis and J. McQueston (2008). ''Univariate distribution relationships'', The American Statistician, 62(1), 45—53. | |||
* S. Ross. (2007) Introduction to Probability Models, 9th edition, New York: Academic Press | |||
* S.V. Amari and R.B. Misra (1997) ''Closed-form expressions for distribution of sum of exponential random variables'',IEEE Trans. Reliab. 46, 519–522 | |||
{{ProbDistributions|continuous-semi-infinite}} | |||
{{DEFAULTSORT:Hypoexponential Distribution}} | |||
[[Category:Continuous distributions]] | |||
[[Category:Probability distributions]] | |||
[[zh:Erlang分布]] |
Revision as of 13:10, 25 March 2013
Template:Probability distribution
In probability theory the hypoexponential distribution or the generalized Erlang distribution is a continuous distribution, that has found use in the same fields as the Erlang distribution, such as queueing theory, teletraffic engineering and more generally in stochastic processes. It is called the hypoexponetial distribution as it has a coefficient of variation less than one, compared to the hyper-exponential distribution which has coefficient of variation greater than one and the exponential distribution which has coefficient of variation of one.
Overview
The Erlang distribution is a series of k exponential distributions all with rate . The hypoexponential is a series of k exponential distributions each with their own rate , the rate of the exponential distribution. If we have k independently distributed exponential random variables , then the random variable,
is hypoexponentially distributed. The hypoexponential has a minimum coefficient of variation of .
Relation to the phase-type distribution
As a result of the definition it is easier to consider this distribution as a special case of the phase-type distribution. The phase-type distribution is the time to absorption of a finite state Markov process. If we have a k+1 state process, where the first k states are transient and the state k+1 is an absorbing state, then the distribution of time from the start of the process until the absorbing state is reached is phase-type distributed. This becomes the hypoexponential if we start in the first 1 and move skip-free from state i to i+1 with rate until state k transitions with rate to the absorbing state k+1. This can be written in the form of a subgenerator matrix,
For simplicity denote the above matrix . If the probability of starting in each of the k states is
Two parameter case
Where the distribution has two parameters () the explicit forms of the probability functions and the associated statistics are[1]
The coefficient of variation is always < 1.
Given the sample mean () and sample coefficient of variation () the parameters and can be estimated:
Characterization
A random variable has cumulative distribution function given by,
and density function,
where is a column vector of ones of the size k and is the matrix exponential of A. When for all , the density function can be written as
where are the Lagrange basis polynomials associated with the points .
The distribution has Laplace transform of
Which can be used to find moments,
General case
In the general case where there are distinct sums of exponential distributions with rates and a number of terms in each sum equals to respectively. The cumulative distribution function for is given by
with
with the additional convention .
Uses
This distribution has been used in population genetics[2] and queuing theory[3][4]
See also
References
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Additional material
- M. F. Neuts. (1981) Matrix-Geometric Solutions in Stochastic Models: an Algorthmic Approach, Chapter 2: Probability Distributions of Phase Type; Dover Publications Inc.
- G. Latouche, V. Ramaswami. (1999) Introduction to Matrix Analytic Methods in Stochastic Modelling, 1st edition. Chapter 2: PH Distributions; ASA SIAM,
- Colm A. O'Cinneide (1999). Phase-type distribution: open problems and a few properties, Communication in Statistic - Stochastic Models, 15(4), 731–757.
- L. Leemis and J. McQueston (2008). Univariate distribution relationships, The American Statistician, 62(1), 45—53.
- S. Ross. (2007) Introduction to Probability Models, 9th edition, New York: Academic Press
- S.V. Amari and R.B. Misra (1997) Closed-form expressions for distribution of sum of exponential random variables,IEEE Trans. Reliab. 46, 519–522
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- ↑ Template:Cite doi
- ↑ Strimmer K, Pybus OG (2001) "Exploring the demographic history of DNA sequences using the generalized skyline plot", Mol Biol Evol 18(12):2298-305
- ↑ http://www.few.vu.nl/en/Images/stageverslag-calinescu_tcm39-105827.pdf
- ↑ Bekker R, Koeleman PM (2011) "Scheduling admissions and reducing variability in bed demand". Health Care Manag Sci, 14(3):237-249