Conservative extension: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
en>Yann.hourdel
mNo edit summary
 
en>Pit-trout
Clarified definition of model-theoretic conservativity, making explicit that "extension" is assumed.
Line 1: Line 1:
== no doubt self-inflicted dead end ==
{{lowercase}}
{{Probability distribution|
  name      =von Mises|
  type      =density|
  pdf_image =[[File:VonMises distribution PDF.png|325px|Plot of the von Mises PMF]]<br /><small>The support is chosen to be [&minus;{{pi}},{{pi}}] with μ&nbsp;=&nbsp;0</small>|
  cdf_image  =[[File:VonMises distribution CDF.png|325px|Plot of the von Mises CMF]]<br /><small>The support is chosen to be [&minus;{{pi}},{{pi}}] with μ&nbsp;=&nbsp;0</small>|
  parameters =<math>\mu</math> real<br><math>\kappa>0</math>|
  support    =<math>x\in</math> any interval of length 2π|
  pdf        =<math>\frac{e^{\kappa\cos(x-\mu)}}{2\pi I_0(\kappa)}</math>|
  cdf        =(not analytic – see text)|
  mean      =<math>\mu</math>|
  median    =<math>\mu</math>|
  mode      =<math>\mu</math>|
  variance  =<math>\textrm{var}(x)=1-I_1(\kappa)/I_0(\kappa)</math> (circular)|
  skewness  =|
  kurtosis  =|
  entropy    =<math>-\kappa\frac{I_1(\kappa)}{I_0(\kappa)}+\ln[2\pi I_0(\kappa)]</math> (differential)|
  mgf        =|
  char      =<math>\frac{I_{|n|}(\kappa)}{I_0(\kappa)}e^{i n \mu}</math>|
}}


No reservation broke out, with a wave of strong energy coercion, violence against Xiao Yan swept away.<br><br>Qiaode soul cliff painting workaholic like appearance, Xiao Yan face does not [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-7.html casio 腕時計 説明書] appear too strong fluctuations in stature only to subside, but is a step forward, his eyes looked [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-15.html カシオ gps 時計] dull rapidly enlarge the eye pupil The energy of light and shadow.<br><br>'Xiao Yan, subject to go die!'<br><br>saw Xiao Yan actually great care not to [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-1.html casio 時計] escape, but also micro hi soul Cliff heart, displaying a pattern of his family, even the stars are afraid to respect the peak of the strong contrast Ying Peng, Xiao Yan such acts, no doubt self-inflicted dead end!<br><br>'laugh!'<br><br>soul Cliff extremely rapid rate, almost under the flash is in the front of Xiao Yan, Xiao Yan pressure Kuangmeng whole body weight robes fluttering sound, and its right palm is clenched into a fist, The [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-9.html カシオ 時計 プロトレック] vast body vindictive, give all converge over fist, immediately, [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-3.html casio 腕時計 レディース] blow fiercely blasted
In [[probability theory]] and [[directional statistics]], the '''[[Richard von Mises|von Mises]] distribution''' (also known as the '''circular normal distribution''' or '''Tikhonov distribution''') is a continuous [[probability distribution]] on the [[circle]]. It is a close approximation to the [[wrapped normal distribution]], which is the circular analogue of the [[normal distribution]]. A freely diffusing angle <math>\theta</math> on a circle is a wrapped normally distributed random variable with an unwrapped variance that grows linearly in time. On the other hand, the von Mises distribution is the stationary distribution of a drift and diffusion process on the circle in a harmonic potential, i.e. with a preferred orientation.<ref name="Risken89">{{cite book |title=The Fokker–Planck Equation |last=Risken |first=H. |year=1989|publisher=Springer |location= |isbn=978-3-540-61530-9 |url=http://www.amazon.com/dp/354061530X}}</ref> The von Mises distribution is the [[Maximum entropy probability distribution|maximum entropy distribution]] for a given expectation value of <math>z=e^{i\theta}</math>. The von Mises distribution is a special case of the [[von Mises–Fisher distribution]] on the ''N''-dimensional sphere.
相关的主题文章:
<ul>
 
  <li>[http://www.wtqj888.com/forum.php?mod=viewthread&tid=39829 http://www.wtqj888.com/forum.php?mod=viewthread&tid=39829]</li>
 
  <li>[http://www.goo-net.com/cgi-bin/goojp/bbs/thread_list.cgi http://www.goo-net.com/cgi-bin/goojp/bbs/thread_list.cgi]</li>
 
  <li>[http://exclusivelibraryrelease.com/groupware/blogs/post/1819 http://exclusivelibraryrelease.com/groupware/blogs/post/1819]</li>
 
</ul>


== mouth Diao in a grass ==
== Definition ==
The von Mises probability density function for the angle ''x'' is given by:<ref name="Mardia99">{{cite book |title=Directional Statistics |last=Mardia |first=Kantilal |authorlink=Kantilal Mardia |coauthors=Jupp, Peter E. |year=1999|publisher=Wiley |location= |isbn=978-0-471-95333-3 |url=http://www.amazon.com/dp/0471953334 |accessdate=2011-07-19}}</ref>


Qiaolian white woman, for the first time 'exposed' a hint of crimson: 'the year of Xiao Yan brother, which is very attractive ...'<br><br>'Oh ...' [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-14.html カシオ腕時計 メンズ] facing the girls undisguised frank discourse, juvenile awkward laugh, can but did not say anything, people do not romantic Wasted, but now, he really did not qualify with this mood swing lonely passed away, facing the [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-4.html カシオ 腕時計 ソーラー] outside of the square slowly to go ...<br><br>stood there looking at it [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-8.html カシオ 掛け時計] seems like a lonely teenager back isolated, Xiao Xun children hesitated for a moment, and then behind the Lord of jealousy howl sound, quickly caught up, side by side with the juvenile line ...<br><br>Chapter grudge continent<br><br>Chapter grudge continent (chapter free)<br><br>month, such as [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-8.html カシオ レディース 電波ソーラー腕時計] silver, starry sky.<br><br>cliff of Britain, Xiao Yan reclining on the grass, mouth Diao in [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-0.html カシオ 腕時計 チタン] a grass, chewing move slightly, leaving it open to diffuse a touch of bitterness in the mouth ...
:<math>f(x\mid\mu,\kappa)=\frac{e^{\kappa\cos(x-\mu)}}{2\pi I_0(\kappa)}</math>
相关的主题文章:
<ul>
 
  <li>[http://bizguide.businessownersideacafe.com/cgi-bin/glinks/search.cgi http://bizguide.businessownersideacafe.com/cgi-bin/glinks/search.cgi]</li>
 
  <li>[http://ms.chaoxing.com/home.php?mod=space&uid=1476374 http://ms.chaoxing.com/home.php?mod=space&uid=1476374]</li>
 
  <li>[http://www.renshouwang.com/home.php?mod=space&uid=21769 http://www.renshouwang.com/home.php?mod=space&uid=21769]</li>
 
</ul>


== Jiaoqu crashed into 萧炎怀 ==
where ''I''<sub>0</sub>(''x'') is the modified [[Bessel function]] of order 0.


Grassland, but it is the casio 腕時計 メンズ latter that grabbed white jade Haowan, slightly said something that casio 腕時計 説明書 is whispered in the girl screams, and will pull into the embrace of.<br><br>Jiaoqu crashed into 萧炎怀, feel kind of warm temperatures reveals clothes came, blushing cheeks almost smoked children can spill water in general, after a little struggle, it can only give up unnecessary resistance, sound such as mosquitoes Fly like tiny: 'Do not.'<br><br>arm quietly rings that bear a narrow カシオ 腕時計 チタン waist slim grip, comfortable カシオ 腕時計 チタン touch that makes the hearts of a Chang Xiao Yan, looking down at his face blushing Kaoru children, joking: 'I say girl, which ran most of the night My room, honest account of what attempt? '<br><br>'to blame.' Organisation of the Organisation Dai Mei, Kaoru children grumbled.<br><br>looked Duzhuoxiaozui, showing a small woman wronged extremely difficult to appear to look like Kaoru children, Xiao Yan カシオ 掛け時計 was ring the waist arm involuntarily tightened
The parameters μ and 1/κ are analogous to μ and ''σ''<sup>2</sup> (the mean and variance) in the normal distribution:
相关的主题文章:
* μ is a measure of location (the distribution is clustered around μ), and
<ul>
* κ is a measure of concentration (a reciprocal measure of [[statistical dispersion|dispersion]], so 1/κ is analogous to ''σ''<sup>2</sup>).
 
** If κ is zero, the distribution is uniform, and for small κ, it is close to uniform.
  <li>?mod=viewthread&tid=1171353</li>
** If κ is large, the distribution becomes very concentrated about the angle μ with κ being a measure of the concentration. In fact, as κ increases, the distribution approaches a normal distribution in ''x''&nbsp; with mean μ and variance&nbsp;1/κ.
 
  <li>?aid=2963</li>
 
  <li>?tid=14822</li>
 
</ul>


== then pointed It was as if a huge infinity square ==
The probability density can be expressed as a series of Bessel functions (see Abramowitz and Stegun [http://www.math.sfu.ca/~cbm/aands/page_376.htm §9.6.34])


Xiao Yan, a pedestrian Shanlue stand on a building, look around, and found this piece of geography, is a little knowledge is a huge almost square, in [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-1.html カシオ スタンダード 腕時計] the square of the air, suspended [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-3.html カシオ gps 時計] in thin air actually a lot of stone, The stone has a faint glow filled out, looks quite miraculous.<br><br>'Those stone is the final contestants seats,' pointing to those stone leaf weight suspended in midair by the highly anticipated, laughing.<br><br>'last seat?' Wen Yan, Xiao Yan brow of a challenge.<br><br>'Oh, Dan will be extremely grand, [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-7.html カシオ 掛け時計] impossible as long as those who participated in the General Assembly is eligible stage, before entering the field, strictly speaking, there are two major hurdles selection.' leaf weight smiled, then [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-2.html 腕時計 casio] pointed It was as if a huge infinity square, said: 'see distant patch of dark gray' color 'of the space that?'<br><br>Xiao [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-2.html カシオ 時計 プロトレック] Yan eyes looking down at the leaf weight within the meaning of
: <math> f(x\mid\mu,\kappa) = \frac{1}{2\pi}\left(1+\frac{2}{I_0(\kappa)} \sum_{j=1}^\infty I_j(\kappa) \cos[j(x-\mu)]\right) </math>
相关的主题文章:
<ul>
 
  <li>[http://www.yachtsonline.com.cn/plus/feedback.php?aid=10316 http://www.yachtsonline.com.cn/plus/feedback.php?aid=10316]</li>
 
  <li>[http://www.wehappydm.com/plus/feedback.php?aid=1205 http://www.wehappydm.com/plus/feedback.php?aid=1205]</li>
 
  <li>[http://jbhq.org/plus/feedback.php?aid=5 http://jbhq.org/plus/feedback.php?aid=5]</li>
 
</ul>


== While crawling ==
where ''I''<sub>''j''</sub>(''x'') is the modified [[Bessel function]] of order ''j''.


While crawling, immediately hear it a rip on one pair of bone wings, suddenly playing the 'shot' out.<br><br>wing bone was Jade 'color', Quintana crystal, in which crystal among the spread of a strange green [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-5.html gps 腕時計 カシオ] and red road lines, looks quite the drive and determination.<br><br>this bone [http://alleganycountyfair.org/sitemap.xml http://alleganycountyfair.org/sitemap.xml] wing, Xiao Yan is the use of natural day refining demon wings Phoenix, but Phoenix had demon days because of fear of family wraps, plus the time and the day is not qualified to compete demon Phoenix family, Therefore, the body is always deep, but today, it is had to the cast out demons today anyway, as he has no right Phoenix [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-9.html カシオ 腕時計 チタン] Family Table 'dew' What good will that he [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-2.html カシオ 時計 プロトレック] no longer secretive.<br><br>'laugh!'<br><br>nothingness sky, Notting old ghost ghostly figure emerges, palm lightning mudra, vast energy, rapidly surging.<br><br>'bang!'<br><br>just [http://www.ispsc.edu.ph/nav/japandi/casio-rakuten-2.html 腕時計 casio] condensed energy, a hot and Ling
The cumulative distribution function is not analytic and is best found by integrating the above series. The indefinite integral of the probability density is:
相关的主题文章:
 
<ul>
:<math>\Phi(x\mid\mu,\kappa)=\int f(t\mid\mu,\kappa)\,dt =\frac{1}{2\pi}\left(x + \frac{2}{I_0(\kappa)} \sum_{j=1}^\infty I_j(\kappa) \frac{\sin[j(x-\mu)]}{j}\right). </math>
 
 
  <li>[http://www.xintai.org.cn/plus/feedback.php?aid=270 http://www.xintai.org.cn/plus/feedback.php?aid=270]</li>
The cumulative distribution function will be a function of the lower limit of
 
integration ''x''<sub>0</sub>:
  <li>[http://www.groundriddim.com/h/cgi/news/news.cgi http://www.groundriddim.com/h/cgi/news/news.cgi]</li>
 
 
:<math>F(x\mid\mu,\kappa)=\Phi(x\mid\mu,\kappa)-\Phi(x_0\mid\mu,\kappa).\,</math>
  <li>[http://www.pseudodrom.com/cgi-bin/gaestebuch.cgi http://www.pseudodrom.com/cgi-bin/gaestebuch.cgi]</li>
 
 
== Moments ==
</ul>
The moments of the von Mises distribution are usually calculated as the moments of ''z'' = ''e''<sup>''ix''</sup> rather than the angle ''x'' itself. These moments are referred to as "circular moments". The variance calculated from these moments is referred to as the "circular variance". The one exception to this is that the "mean" usually refers to the argument of the circular mean, rather than the circular mean itself.
 
The ''n''th raw moment of ''z'' is:
 
:<math>m_n=\langle z^n\rangle=\int_\Gamma z^n\,f(x|\mu,\kappa)\,dx</math>
:<math>= \frac{I_{|n|}(\kappa)}{I_0(\kappa)}e^{i n \mu}</math>
 
where the integral is over any interval <math>\Gamma</math> of length 2π. In calculating the above integral, we use the fact that ''z''<sup>''n''</sup> = cos(''n''x)&nbsp;+&nbsp;i&nbsp;sin(''nx'') and the Bessel function identity (See Abramowitz and Stegun [http://www.math.sfu.ca/~cbm/aands/page_376.htm §9.6.19]):
 
:<math>I_n(\kappa)=\frac{1}{\pi}\int_0^\pi e^{\kappa\cos(x)}\cos(nx)\,dx.</math>
 
The mean of ''z''&nbsp; is then just
 
:<math>m_1= \frac{I_1(\kappa)}{I_0(\kappa)}e^{i\mu}</math>
 
and the "mean" value of ''x'' is then taken to be the argument μ. This is the "average" direction of the angular random variables. The variance of ''z'', or the circular variance of ''x'' is:
 
:<math>\textrm{var}(x)= 1-E[\cos(x-\mu)]
= 1-\frac{I_1(\kappa)}{I_0(\kappa)}.</math>
 
== Limiting behavior ==
In the limit of large κ the distribution becomes a [[normal distribution]]
 
:<math>\lim_{\kappa\rightarrow\infty}
f(x\mid\mu,\kappa)=\frac 1 {\sigma\sqrt{2\pi}} \exp\left[\dfrac{-(x-\mu)^2}{2\sigma^2}\right]</math>
 
where σ<sup>2</sup> = 1/κ. In the limit of small κ it becomes a [[uniform distribution (continuous)|uniform distribution]]:
 
:<math>\lim_{\kappa\rightarrow 0}f(x\mid\mu,\kappa)=\mathrm{U}(x)</math>
 
where the interval for the uniform distribution ''U''(''x'') is the chosen interval of length 2π.
 
== Estimation of parameters ==
A series of ''N'' measurements <math>z_n=e^{i\theta_n}</math> drawn from a von Mises distribution may be used to estimate certain parameters of the distribution. (Borradaile, 2003) The average of the series <math>\overline{z}</math> is defined as
 
:<math>\overline{z}=\frac{1}{N}\sum_{n=1}^N z_n</math>
 
and its expectation value will be just the first moment:
 
:<math>\langle\overline{z}\rangle=\frac{I_1(\kappa)}{I_0(\kappa)}e^{i\mu}.</math>
 
In other words, <math>\overline{z}</math> is an [[unbiased estimator]] of the first moment. If we assume that the mean <math>\mu</math> lies in the interval <math>[-\pi,\pi)</math>, then Arg<math>(\overline{z})</math> will be a (biased) estimator of the mean <math>\mu</math>.
 
Viewing the <math>z_n</math> as a set of vectors in the complex plane, the <math>\bar{R}^ 2</math> statistic is the square of the length of the averaged vector:
 
:<math>\bar{R}^ 2=\overline{z}\,\overline{z^*}=\left(\frac{1}{N}\sum_{n=1}^N \cos\theta_n\right)^2+\left(\frac{1}{N}\sum_{n=1}^N \sin\theta_n\right)^2</math>
 
and its expectation value is:
 
:<math>\langle \bar{R}^2\rangle=\frac{1}{N}+\frac{N-1}{N}\,\frac{I_1(\kappa)^2}{I_0(\kappa)^2}.</math>
 
In other words, the statistic
 
:<math>R_e^2=\frac{N}{N-1}\left(\bar{R}^2-\frac{1}{N}\right)</math>
 
will be an unbiased estimator of <math>\frac{I_1(\kappa)^2}{I_0(\kappa)^2}\,</math> and solving the equation <math>R_e=\frac{I_1(\kappa)}{I_0(\kappa)}\,</math> for <math>\kappa\,</math> will yield a (biased) estimator of <math>\kappa\,</math>. In analogy to the linear case, the solution to the equation <math>\bar{R}=\frac{I_1(\kappa)}{I_0(\kappa)}\,</math> will yield the [[Maximum likelihood|maximum likelihood estimate]] of <math>\kappa\,</math> and both will be equal in the limit of large ''N''. For approximate solution to <math>\kappa\,</math> refer to [[von Mises–Fisher distribution]].
 
== Distribution of the mean ==
The [[Directional statistics|distribution of the sample mean]] <math>\overline{z} = \bar{R}e^{i\overline{\theta}}</math> for the von Mises distribution is given by:<ref name="Jam">{{cite book |title=Topics in Circular Statistics |last=Jammalamadaka |first=S. Rao |authorlink= |coauthors=Sengupta, A. |year=2001 |publisher=World Scientific Publishing Company |location= |isbn=978-981-02-3778-3 |url=http://www.amazon.com/dp/9810237782#reader_9810237782 |accessdate=2010-03-03}}</ref>
 
:<math>
P(\bar{R},\bar{\theta})\,d\bar{R}\,d\bar{\theta}=\frac{1}{ (2\pi I_0(k))^N}\int_\Gamma \prod_{n=1}^N \left( e^{\kappa\cos(\theta_n-\mu)} d\theta_n\right) = \frac{e^{\kappa N\bar{R}\cos(\bar{\theta}-\mu)}}{I_0(\kappa)^N}\left(\frac{1}{(2\pi)^N}\int_\Gamma \prod_{n=1}^N d\theta_n\right)
</math>
 
where ''N'' is the number of measurements and <math>\Gamma\,</math> consists of intervals of <math>2\pi</math> in the variables, subject to the constraint that <math>\bar{R}</math> and <math>\bar{\theta}</math> are constant, where <math>\bar{R}</math> is the mean resultant:
 
:<math>
\bar{R}^2=|\bar{z}|^2= \left(\frac{1}{N}\sum_{n=1}^N \cos(\theta_n) \right)^2 + \left(\frac{1}{N}\sum_{n=1}^N \sin(\theta_n) \right)^2
</math>
 
and <math>\overline{\theta}</math> is the mean angle:
 
:<math>
\overline{\theta}=\mathrm{Arg}(\overline{z}). \,
</math>
 
Note that product term in parentheses is just the distribution of the mean for a [[circular uniform distribution]].<ref name="Jam"/>
 
== Entropy ==
 
The [[Entropy (information theory)|information entropy]] of the Von Mises distribution is defined as:<ref name="Mardia99"/>
 
:<math>H = -\int_\Gamma f(\theta;\mu,\kappa)\,\ln(f(\theta;\mu,\kappa))\,d\theta\,</math>
 
where <math>\Gamma</math> is any interval of length <math>2\pi</math>. The logarithm of the density of the Von Mises distribution is straightforward:
 
:<math>\ln(f(\theta;\mu,\kappa))=-\ln(2\pi I_0(\kappa))+ \kappa \cos(\theta)\,</math>
 
The characteristic function representation for the Von Mises distribution is:
 
:<math>f(\theta;\mu,\kappa) =\frac{1}{2\pi}\left(1+2\sum_{n=1}^\infty\phi_n\cos(n\theta)\right)</math>
 
where <math>\phi_n= I_{|n|}(\kappa)/I_0(\kappa)</math>. Substituting these expressions into the entropy integral, exchanging the order of integration and summation, and using the orthogonality of the cosines, the entropy may be written:
 
:<math>H = \ln(2\pi I_0(\kappa))-\kappa\phi_1 = \ln(2\pi I_0(\kappa))-\kappa\frac{I_1(\kappa)}{I_0(\kappa)}</math>
 
For <math>\kappa=0</math>, the von Mises distribution becomes the [[circular uniform distribution]] and the entropy attains its maximum value of <math>\ln(2\pi)</math>.
 
==See also==
* [[Bivariate von Mises distribution]]
* [[Directional statistics]]
* [[Von Mises–Fisher distribution]]
* [[Kent distribution]]
 
== References ==
<references/>
* Abramowitz, M. and Stegun, I. A.  (ed.), [[Abramowitz and Stegun|Handbook of Mathematical Functions]], National Bureau of Standards, 1964; reprinted Dover Publications, 1965. ISBN 0-486-61272-4
* "Algorithm AS 86: The von Mises Distribution Function", Mardia, Applied Statistics, 24, 1975 (pp.&nbsp;268–272).
* "Algorithm 518, Incomplete Bessel Function I0: The von Mises Distribution", Hill, ACM Transactions on Mathematical Software, Vol. 3, No. 3, September 1977, Pages 279–284.
* Best, D. and Fisher, N. (1979). Efficient simulation of the von Mises distribution. Applied Statistics, 28, 152–157.
* Evans, M., Hastings, N., and Peacock, B., "von Mises Distribution". Ch. 41 in Statistical Distributions, 3rd ed. New York. Wiley 2000.
* Fisher, Nicholas I., Statistical Analysis of Circular Data. New York. Cambridge 1993.
* "Statistical Distributions", 2nd. Edition, Evans, Hastings, and Peacock, John Wiley and Sons, 1993, (chapter 39). ISBN 0-471-55951-2
* {{cite book |title=Statistics of Earth Science Data |last=Borradaile |first=Graham |year=2003 |publisher=Springer |isbn=978-3-540-43603-4 |url=http://books.google.com/books?id=R3GpDglVOSEC&printsec=frontcover&source=gbs_navlinks_s#v=onepage&q=&f=false |accessdate=31 Dec 2009}}
 
{{ProbDistributions|directional}}
 
{{DEFAULTSORT:Von Mises Distribution}}
[[Category:Continuous distributions]]
[[Category:Directional statistics]]
[[Category:Exponential family distributions]]
[[Category:Probability distributions]]

Revision as of 18:51, 2 September 2013

Template:Lowercase Template:Probability distribution

In probability theory and directional statistics, the von Mises distribution (also known as the circular normal distribution or Tikhonov distribution) is a continuous probability distribution on the circle. It is a close approximation to the wrapped normal distribution, which is the circular analogue of the normal distribution. A freely diffusing angle on a circle is a wrapped normally distributed random variable with an unwrapped variance that grows linearly in time. On the other hand, the von Mises distribution is the stationary distribution of a drift and diffusion process on the circle in a harmonic potential, i.e. with a preferred orientation.[1] The von Mises distribution is the maximum entropy distribution for a given expectation value of . The von Mises distribution is a special case of the von Mises–Fisher distribution on the N-dimensional sphere.

Definition

The von Mises probability density function for the angle x is given by:[2]

where I0(x) is the modified Bessel function of order 0.

The parameters μ and 1/κ are analogous to μ and σ2 (the mean and variance) in the normal distribution:

  • μ is a measure of location (the distribution is clustered around μ), and
  • κ is a measure of concentration (a reciprocal measure of dispersion, so 1/κ is analogous to σ2).
    • If κ is zero, the distribution is uniform, and for small κ, it is close to uniform.
    • If κ is large, the distribution becomes very concentrated about the angle μ with κ being a measure of the concentration. In fact, as κ increases, the distribution approaches a normal distribution in x  with mean μ and variance 1/κ.

The probability density can be expressed as a series of Bessel functions (see Abramowitz and Stegun §9.6.34)

where Ij(x) is the modified Bessel function of order j.

The cumulative distribution function is not analytic and is best found by integrating the above series. The indefinite integral of the probability density is:

The cumulative distribution function will be a function of the lower limit of integration x0:

Moments

The moments of the von Mises distribution are usually calculated as the moments of z = eix rather than the angle x itself. These moments are referred to as "circular moments". The variance calculated from these moments is referred to as the "circular variance". The one exception to this is that the "mean" usually refers to the argument of the circular mean, rather than the circular mean itself.

The nth raw moment of z is:

where the integral is over any interval of length 2π. In calculating the above integral, we use the fact that zn = cos(nx) + i sin(nx) and the Bessel function identity (See Abramowitz and Stegun §9.6.19):

The mean of z  is then just

and the "mean" value of x is then taken to be the argument μ. This is the "average" direction of the angular random variables. The variance of z, or the circular variance of x is:

Limiting behavior

In the limit of large κ the distribution becomes a normal distribution

where σ2 = 1/κ. In the limit of small κ it becomes a uniform distribution:

where the interval for the uniform distribution U(x) is the chosen interval of length 2π.

Estimation of parameters

A series of N measurements drawn from a von Mises distribution may be used to estimate certain parameters of the distribution. (Borradaile, 2003) The average of the series is defined as

and its expectation value will be just the first moment:

In other words, is an unbiased estimator of the first moment. If we assume that the mean lies in the interval , then Arg will be a (biased) estimator of the mean .

Viewing the as a set of vectors in the complex plane, the statistic is the square of the length of the averaged vector:

and its expectation value is:

In other words, the statistic

will be an unbiased estimator of and solving the equation for will yield a (biased) estimator of . In analogy to the linear case, the solution to the equation will yield the maximum likelihood estimate of and both will be equal in the limit of large N. For approximate solution to refer to von Mises–Fisher distribution.

Distribution of the mean

The distribution of the sample mean for the von Mises distribution is given by:[3]

where N is the number of measurements and consists of intervals of in the variables, subject to the constraint that and are constant, where is the mean resultant:

and is the mean angle:

Note that product term in parentheses is just the distribution of the mean for a circular uniform distribution.[3]

Entropy

The information entropy of the Von Mises distribution is defined as:[2]

where is any interval of length . The logarithm of the density of the Von Mises distribution is straightforward:

The characteristic function representation for the Von Mises distribution is:

where . Substituting these expressions into the entropy integral, exchanging the order of integration and summation, and using the orthogonality of the cosines, the entropy may be written:

For , the von Mises distribution becomes the circular uniform distribution and the entropy attains its maximum value of .

See also

References

  1. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  2. 2.0 2.1 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  3. 3.0 3.1 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  • Abramowitz, M. and Stegun, I. A. (ed.), Handbook of Mathematical Functions, National Bureau of Standards, 1964; reprinted Dover Publications, 1965. ISBN 0-486-61272-4
  • "Algorithm AS 86: The von Mises Distribution Function", Mardia, Applied Statistics, 24, 1975 (pp. 268–272).
  • "Algorithm 518, Incomplete Bessel Function I0: The von Mises Distribution", Hill, ACM Transactions on Mathematical Software, Vol. 3, No. 3, September 1977, Pages 279–284.
  • Best, D. and Fisher, N. (1979). Efficient simulation of the von Mises distribution. Applied Statistics, 28, 152–157.
  • Evans, M., Hastings, N., and Peacock, B., "von Mises Distribution". Ch. 41 in Statistical Distributions, 3rd ed. New York. Wiley 2000.
  • Fisher, Nicholas I., Statistical Analysis of Circular Data. New York. Cambridge 1993.
  • "Statistical Distributions", 2nd. Edition, Evans, Hastings, and Peacock, John Wiley and Sons, 1993, (chapter 39). ISBN 0-471-55951-2
  • 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534

55 yrs old Metal Polisher Records from Gypsumville, has interests which include owning an antique car, summoners war hack and spelunkering. Gets immense motivation from life by going to places such as Villa Adriana (Tivoli).

my web site - summoners war hack no survey ios