Jump to content
Main menu
Main menu
move to sidebar
hide
Navigation
Main page
Recent changes
Random page
Help about MediaWiki
Special pages
Niidae Wiki
Search
Search
Appearance
Create account
Log in
Personal tools
Create account
Log in
Pages for logged out editors
learn more
Contributions
Talk
Editing
Degenerate distribution
Page
Discussion
English
Read
Edit
View history
Tools
Tools
move to sidebar
hide
Actions
Read
Edit
View history
General
What links here
Related changes
Page information
Appearance
move to sidebar
hide
Warning:
You are not logged in. Your IP address will be publicly visible if you make any edits. If you
log in
or
create an account
, your edits will be attributed to your username, along with other benefits.
Anti-spam check. Do
not
fill this in!
{{Short description|The probability distribution of a random variable which only takes a single value}} {{More citations needed|date=August 2021}}<!-- EDITORS! Please see [[Wikipedia:WikiProject Probability#Standards]] for a discussion of standards used for probability distribution articles such as this one. --> {{Probability distribution| name =Degenerate univariate| type =mass| cdf_image =[[Image:Degenerate.svg|325px|Plot of the degenerate distribution CDF for {{math|''a'' {{=}} 0}}]]<br /><small>CDF for {{math|''a'' {{=}} 0}}. The horizontal axis is {{mvar|x}}.</small>| parameters =<math>a \in (-\infty,\infty)\,</math>| support =<math>\{a\}</math>| pdf =<math> \begin{matrix} 1 & \mbox{for }x=a \\ 0 & \mbox{elsewhere} \end{matrix} </math>| cdf =<math> \begin{matrix} 0 & \mbox{for }x<a \\1 & \mbox{for }x\ge a \end{matrix} </math>| mean =<math>a\,</math>| median =<math>a\,</math>| mode =<math>a\,</math>| variance =<math>0\,</math>| skewness =[[0/0|undefined]]| kurtosis =[[0/0|undefined]]| entropy =<math>0\,</math>| mgf =<math>e^{at}\,</math>| char =<math>e^{iat}\,</math>| pgf =<math>z^{a}\,</math>| }} In [[probability theory]], a '''degenerate distribution''' on a [[measure space]] <math>(E, \mathcal{A}, \mu)</math> is a [[probability distribution]] whose [[Support (measure theory)|support]] is a [[null set]] with respect to <math>\mu</math>. For instance, in the {{mvar|n}}-dimensional space {{math|β{{sup|''n''}}}} endowed with the [[Lebesgue measure]], any distribution concentrated on a {{mvar|d}}-dimensional subspace with {{math|''d'' < ''n''}} is a degenerate distribution on {{math|β{{sup|''n''}}}}.<ref name=":0">{{Cite web|title=Degenerate distribution - Encyclopedia of Mathematics|url=http://encyclopediaofmath.org/index.php?title=Degenerate_distribution|url-status=live|archive-url=https://web.archive.org/web/20201205021345/https://encyclopediaofmath.org/wiki/Degenerate_distribution|archive-date=5 December 2020|access-date=6 August 2021|website=encyclopediaofmath.org}}</ref> This is essentially the same notion as a [[singular measure|singular probability measure]], but the term ''degenerate'' is typically used when the distribution arises as a [[Convergence of random variables|limit]] of (non-degenerate) distributions. When the support of a degenerate distribution consists of a single point {{mvar|a}}, this distribution is a '''[[Dirac measure]] in {{mvar|a}}''': it is the distribution of a deterministic random variable equal to {{mvar|a}} with probability 1. This is a special case of a [[discrete distribution]]; its [[probability mass function]] equals 1 in {{mvar|a}} and 0 everywhere else. In the case of a real-valued random variable, the [[cumulative distribution function]] of the degenerate distribution localized in {{mvar|a}} is <math display="block">F_{a}(x)=\left\{\begin{matrix} 1, & \mbox{if }x\ge a \\ 0, & \mbox{if }x<a \end{matrix}\right.</math> Such degenerate distributions often arise as limits of [[continuous distribution]]s whose [[variance]] goes to 0. ==Constant random variable== A '''constant random variable''' is a [[discrete random variable]] that takes a [[Constant function|constant]] value, regardless of any [[event (probability theory)|event]] that occurs. This is technically different from an '''[[almost surely]] constant random variable''', which may take other values, but only on events with probability zero: Let {{math|''X'': Ξ© β β}} be a real-valued random variable defined on a probability space {{math|(Ξ©, β)}}. Then {{mvar|X}} is an ''almost surely constant random variable'' if there exists <math>a \in \mathbb{R}</math> such that <math display="block">\mathbb{P}(X = a) = 1,</math> and is furthermore a ''constant random variable'' if <math display="block">X(\omega) = a, \quad \forall\omega \in \Omega.</math> A constant random variable is almost surely constant, but the converse is not true, since if {{mvar|X}} is almost surely constant then there may still exist {{math|Ξ³ β Ξ©}} such that {{math|''X''(Ξ³) β a}}. For practical purposes, the distinction between {{mvar|X}} being constant or almost surely constant is unimportant, since these two situation correspond to the same degenerate distribution: the Dirac measure. ==Higher dimensions== Degeneracy of a [[multivariate distribution]] in ''n'' random variables arises when the support lies in a space of dimension less than ''n''.<ref name=":0" /> This occurs when at least one of the variables is a deterministic function of the others. For example, in the 2-variable case suppose that ''Y'' = ''aX + b'' for scalar random variables ''X'' and ''Y'' and scalar constants ''a'' β 0 and ''b''; here knowing the value of one of ''X'' or ''Y'' gives exact knowledge of the value of the other. All the possible points (''x'', ''y'') fall on the one-dimensional line ''y = ax + b''.{{Citation needed|date=August 2021}} In general when one or more of ''n'' random variables are exactly linearly determined by the others, if the [[covariance matrix]] exists its rank is less than ''n<ref name=":0" />''{{Verify source|date=August 2021}} and its [[determinant]] is 0, so it is [[Positive semidefinite matrix|positive semi-definite]] but not positive definite, and the [[joint probability distribution]] is degenerate.{{Citation needed|date=August 2021}} Degeneracy can also occur even with non-zero covariance. For example, when scalar ''X'' is [[symmetric distribution|symmetrically distributed]] about 0 and ''Y'' is exactly given by ''Y'' = ''X''<sup>2</sup>, all possible points (''x'', ''y'') fall on the parabola ''y = x''<sup>2</sup>, which is a one-dimensional subset of the two-dimensional space.{{Citation needed|date=August 2021}} == References == {{Reflist}}{{ProbDistributions|miscellaneous}} {{DEFAULTSORT:Degenerate Distribution}} [[Category:Discrete distributions]] [[Category:Types of probability distributions]] [[Category:Infinitely divisible probability distributions]]
Summary:
Please note that all contributions to Niidae Wiki may be edited, altered, or removed by other contributors. If you do not want your writing to be edited mercilessly, then do not submit it here.
You are also promising us that you wrote this yourself, or copied it from a public domain or similar free resource (see
Encyclopedia:Copyrights
for details).
Do not submit copyrighted work without permission!
Cancel
Editing help
(opens in new window)
Templates used on this page:
Template:Citation needed
(
edit
)
Template:Cite web
(
edit
)
Template:Math
(
edit
)
Template:More citations needed
(
edit
)
Template:Mvar
(
edit
)
Template:ProbDistributions
(
edit
)
Template:Probability distribution
(
edit
)
Template:Reflist
(
edit
)
Template:Short description
(
edit
)
Template:Verify source
(
edit
)
Search
Search
Editing
Degenerate distribution
Add topic