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Uncorrelatedness (probability theory)
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{{Short description|Theory in probability}} {{more citations needed|date=January 2013}} In [[probability theory]] and [[statistics]], two real-valued [[random variable]]s, <math>X</math>, <math>Y</math>, are said to be '''uncorrelated''' if their [[covariance]], <math>\operatorname{cov}[X,Y] = \operatorname{E}[XY] - \operatorname{E}[X] \operatorname{E}[Y]</math>, is zero. If two variables are uncorrelated, there is no linear relationship between them. Uncorrelated random variables have a [[Pearson correlation coefficient]], when it exists, of zero, except in the trivial case when either variable has zero [[variance]] (is a constant). In this case the correlation is undefined. In general, uncorrelatedness is not the same as [[orthogonality]], except in the special case where at least one of the two random variables has an expected value of 0. In this case, the [[covariance]] is the expectation of the product, and <math>X</math> and <math>Y</math> are uncorrelated [[if and only if]] <math>\operatorname{E}[XY] = 0</math>. If <math>X</math> and <math>Y</math> are [[statistical independence|independent]], with finite [[second moment]]s, then they are uncorrelated. However, not all uncorrelated variables are independent.<ref name="Papoulis">{{cite book | last = Papoulis| first =Athanasios| title = Probability, Random Variables and Stochastic Processes | publisher = MCGraw Hill | year = 1991| isbn = 0-07-048477-5}}</ref>{{rp|p. 155}} ==Definition== ===Definition for two real random variables=== Two random variables <math>X,Y</math> are called uncorrelated if their covariance <math>\operatorname{Cov}[X,Y]=\operatorname{E}[(X-\operatorname{E}[X]) (Y-\operatorname{E}[Y])]</math> is zero.<ref name="Papoulis" />{{rp|p. 153}}<ref name=KunIlPark>Kun Il Park, Fundamentals of Probability and Stochastic Processes with Applications to Communications, Springer, 2018, 978-3-319-68074-3</ref>{{rp|p. 121}} Formally: {{Equation box 1 |indent = |title= |equation = <math>X,Y \text{ uncorrelated} \quad \iff \quad \operatorname{E}[XY] = \operatorname{E}[X] \cdot \operatorname{E}[Y]</math> |cellpadding= 6 |border |border colour = #0073CF |background colour=#F5FFFA}} ===Definition for two complex random variables=== Two [[complex random variable]]s <math>Z,W</math> are called uncorrelated if their covariance <math>\operatorname{K}_{ZW}=\operatorname{E}[(Z-\operatorname{E}[Z])\overline{(W-\operatorname{E}[W])}]</math> and their pseudo-covariance <math>\operatorname{J}_{ZW}=\operatorname{E}[(Z-\operatorname{E}[Z]) (W-\operatorname{E}[W])]</math> is zero, i.e. <math>Z,W \text{ uncorrelated} \quad \iff \quad \operatorname{E}[Z\overline{W}] = \operatorname{E}[Z] \cdot \operatorname{E}[\overline{W}] \text{ and } \operatorname{E}[ZW] = \operatorname{E}[Z] \cdot \operatorname{E}[W]</math> ===Definition for more than two random variables=== A set of two or more random variables <math>X_1,\ldots,X_n</math> is called uncorrelated if each pair of them is uncorrelated. This is equivalent to the requirement that the non-diagonal elements of the [[autocovariance matrix]] <math>\operatorname{K}_{\mathbf{X}\mathbf{X}}</math> of the [[random vector]] <math>\mathbf{X} = [X_1 \ldots X_n]^\mathrm{T}</math> are all zero. The autocovariance matrix is defined as: :<math>\operatorname{K}_{\mathbf{X}\mathbf{X}} = \operatorname{cov}[\mathbf{X},\mathbf{X}] = \operatorname{E}[(\mathbf{X}-\operatorname{E}[\mathbf{X}])(\mathbf{X}-\operatorname{E}[\mathbf{X}]))^{\rm T}]= \operatorname{E}[\mathbf{X} \mathbf{X}^T] - \operatorname{E}[\mathbf{X}]\operatorname{E}[\mathbf{X}]^T</math> ==Examples of dependence without correlation == {{main|Correlation and dependence}} ===Example 1=== * Let <math>X</math> be a random variable that takes the value 0 with probability 1/2, and takes the value 1 with probability 1/2. * Let <math>Y</math> be a random variable, ''independent'' of <math>X</math>, that takes the value β1 with probability 1/2, and takes the value 1 with probability 1/2. * Let <math>U</math> be a random variable constructed as <math>U=XY</math>. The claim is that <math>U</math> and <math>X</math> have zero covariance (and thus are uncorrelated), but are not independent. Proof: Taking into account that :<math>\operatorname{E}[U] = \operatorname{E}[XY] = \operatorname{E}[X] \operatorname{E}[Y] = \operatorname{E}[X] \cdot 0 = 0,</math> where the second equality holds because <math>X</math> and <math>Y</math> are independent, one gets :<math> \begin{align} \operatorname{cov}[U,X] & = \operatorname{E}[(U-\operatorname E[U])(X-\operatorname E[X])] = \operatorname{E}[ U (X-\tfrac12)] \\ & = \operatorname{E}[X^2 Y - \tfrac12 XY] = \operatorname{E}[(X^2-\tfrac12 X)Y] = \operatorname{E}[(X^2-\tfrac12 X)] \operatorname E[Y] = 0 \end{align} </math> Therefore, <math>U</math> and <math>X</math> are uncorrelated. Independence of <math>U</math> and <math>X</math> means that for all <math>a</math> and <math>b</math>, <math>\Pr(U=a\mid X=b) = \Pr(U=a)</math>. This is not true, in particular, for <math>a=1</math> and <math>b=0</math>. * <math>\Pr(U=1\mid X=0) = \Pr(XY=1\mid X=0) = 0</math> * <math>\Pr(U=1) = \Pr(XY=1) = 1/4 </math> Thus <math>\Pr(U=1\mid X=0)\ne \Pr(U=1)</math> so <math>U</math> and <math>X</math> are not independent. Q.E.D. ===Example 2=== If <math>X</math> is a continuous random variable [[uniform distribution (continuous)|uniformly distributed]] on <math>[-1,1]</math> and <math>Y = X^2</math>, then <math>X</math> and <math>Y</math> are uncorrelated even though <math>X</math> determines <math>Y</math> and a particular value of <math>Y</math> can be produced by only one or two values of <math>X</math> : <math> f_X(t)= {1 \over 2} I_{[-1,1]} ; f_Y(t)= {1 \over {2 \sqrt{t}}} I_{]0,1]}</math> on the other hand, <math> f_{X,Y}</math> is 0 on the triangle defined by <math>0<X<Y<1</math> although <math>f_X \times f_Y </math> is not null on this domain. Therefore <math> f_{X,Y} (X,Y) \neq f_X (X) \times f_Y (Y) </math> and the variables are not independent. <math> E[X] = {{1-1} \over 4} = 0 ; E[Y]= {{1^3 - (-1)^3}\over {3 \times 2} } = {1 \over 3} </math> <math> Cov[X,Y]=E \left [(X-E[X])(Y-E[Y]) \right ] = E \left [X^3- {X \over 3} \right ] = {{1^4-(-1)^4}\over{4 \times 2}}=0 </math> Therefore the variables are uncorrelated. ==When uncorrelatedness implies independence== There are cases in which uncorrelatedness does imply independence.<!-- but not the only two --> One of these cases is the one in which both random variables are two-valued (so each can be linearly transformed to have a [[Bernoulli distribution]]).<ref>[http://www.math.uah.edu/stat/expect/Covariance.html Virtual Laboratories in Probability and Statistics: Covariance and Correlation], item 17.</ref> Further, two jointly normally distributed random variables are independent if they are uncorrelated,<ref>{{cite book|chapter=Chapter 5.5 Conditional Expectation|pages=185β186|title=Introduction to Probability and Mathematical Statistics|year=1992|last1=Bain|first1=Lee|last2=Engelhardt|first2=Max|edition=2nd|isbn=0534929303}}</ref> although this does not hold for variables whose marginal distributions are normal and uncorrelated but whose joint distribution is not joint normal (see [[Normally distributed and uncorrelated does not imply independent]]). ==Generalizations== ===Uncorrelated random vectors=== Two [[random vector]]s <math>\mathbf{X}=(X_1,\ldots,X_m)^T </math> and <math>\mathbf{Y}=(Y_1,\ldots,Y_n)^T </math> are called uncorrelated if :<math>\operatorname{E}[\mathbf{X} \mathbf{Y}^T] = \operatorname{E}[\mathbf{X}]\operatorname{E}[\mathbf{Y}]^T</math>. They are uncorrelated if and only if their [[cross-covariance matrix]] <math>\operatorname{K}_{\mathbf{X}\mathbf{Y}}</math> is zero.<ref name=Gubner>{{cite book |first=John A. |last=Gubner |year=2006 |title=Probability and Random Processes for Electrical and Computer Engineers |publisher=Cambridge University Press |isbn=978-0-521-86470-1}}</ref>{{rp|p.337}} Two complex random vectors <math>\mathbf{Z}</math> and <math>\mathbf{W}</math> are called '''uncorrelated''' if their cross-covariance matrix and their pseudo-cross-covariance matrix is zero, i.e. if :<math>\operatorname{K}_{\mathbf{Z}\mathbf{W}}=\operatorname{J}_{\mathbf{Z}\mathbf{W}}=0</math> where :<math> \operatorname{K}_{\mathbf{Z}\mathbf{W}} =\operatorname{E}[(\mathbf{Z}-\operatorname{E}[\mathbf{Z}]){(\mathbf{W}-\operatorname{E}[\mathbf{W}])}^{\mathrm H}]</math> and :<math> \operatorname{J}_{\mathbf{Z}\mathbf{W}} =\operatorname{E}[(\mathbf{Z}-\operatorname{E}[\mathbf{Z}]){(\mathbf{W}-\operatorname{E}[\mathbf{W}])}^{\mathrm T}]</math>. ===Uncorrelated stochastic processes=== Two [[stochastic process]]es <math>\left\{X_t\right\}</math> and <math>\left\{Y_t\right\}</math> are called '''uncorrelated''' if their cross-covariance <math>\operatorname{K}_{\mathbf{X}\mathbf{Y}}(t_1,t_2) = \operatorname{E} \left[ \left( X(t_1)- \mu_X(t_1) \right) \left( Y(t_2)- \mu_Y(t_2) \right) \right]</math> is zero for all times.<ref name=KunIlPark/>{{rp|p. 142}} Formally: :<math>\left\{X_t\right\},\left\{Y_t\right\} \text{ uncorrelated} \quad :\iff \quad \forall t_1,t_2 \colon \operatorname{K}_{\mathbf{X}\mathbf{Y}}(t_1,t_2) = 0</math>. ==See also== *[[Correlation and dependence]] *[[Binomial distribution#Covariance between two binomials|Binomial distribution: Covariance between two binomials]]{{Broken anchor|date=2024-03-24|bot=User:Cewbot/log/20201008/configuration|reason= The anchor (Covariance between two binomials) [[Special:Diff/927506908|has been deleted]].}} *[[Representative elementary volume|Uncorrelated Volume Element]] ==References== {{reflist}} ==Further reading== *''Probability for Statisticians'', [[Galen R. Shorack]], Springer (c2000) {{ISBN|0-387-98953-6}} [[Category:Covariance and correlation]]
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