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4. MULTIPLE RANDOM VARIABLES Multiple random variables can be associated with every element of the sample space S. Let X and Y be two random variables. Then the pair (X, Y) is called a bivariate random variable, or two dimensional random vector. The bivariate random variable is a function that maps the sample space S into real plane – assigns to every point in S a point (x,y) in the real pane. The range space of (X, Y) is defined by: Rxy x, y ; S and X x, Y y Stochastic Processes – Multiple Random Variables 4-1 y y( ) S (x,y) x( ) (X, Y) as a function from S to the real plane Stochastic Processes – Multiple Random Variables 4-2 x Joint Distribution Function The joint cumulative distribution function of X and Y is the function defined by: FXY x, y P X x, Y y S y y( ) (x,y) Region included in the definition of the joint distribution function x( ) Stochastic Processes – Multiple Random Variables 4-3 x If event A of S is defined as A S; X x; P A FX x and event B as B S;Y y; PB FY y then: FXY x, y P A B Stochastic Processes – Multiple Random Variables 4-4 If, for particular values of x and y, A and B were independent events, then FXY x, y P A B P APB FX xFY y If for all values of x and y FXY x, y FX xFY y then X and Y are independent random variables. Stochastic Processes – Multiple Random Variables 4-5 Properties of the distribution function FXY (x,y): 1. 0 FXY ( x, y) 1 2. FXY ( x1 , y) FXY ( x2 , y) if x1 x2 FXY ( x, y1 ) FXY ( x, y2 ) if y1 y2 3. lim FXY ( x, y) FXY (, ) 1 4. lim FXY ( x, y ) FXY (, y ) 0 x y x lim FXY ( x, y) FXY ( x,) 0 y Stochastic Processes – Multiple Random Variables 4-6 lim FXY ( x, y) FXY (a , y) FXY (a, y) 5. xa lim FXY ( x, y) FXY ( x, b ) FXY ( x, b) xb 6 Px1 X x2 , Y y FXY ( x2 , y) FXY ( x1 , y) Px X , y1 Y y2 FXY ( x, y2 ) FXY ( x, y1 ) 7. If x1 x2 y1 y2 and , then: FXY ( x2 , y2 ) FXY ( x1, y2 ) FXY ( x2 , y1 ) FXY ( x1, y1 ) 0 Stochastic Processes – Multiple Random Variables 4-7 Marginal distribution function lim X x, Y y X x, Y X x y because the condition y is always satisfied. Then: lim FXY ( x, y ) FXY (, y ) FY ( y ) x lim FXY ( x, y) FXY ( x, ) FX ( x) y When obtained in that way functions FX (x) and FY (y) are referred to as the marginal cumulative distributions of X and Y. Stochastic Processes – Multiple Random Variables 4-8 Joint Probability Density Function The derivative FXY ( x, y) f XY ( x, y) xy 2 is called the joint probability density function of the continuous random variables X and Y. FXY ( x, y) x y Stochastic Processes – Multiple Random Variables 4-9 f XY ( , )dd Properties of the joint probability density function fXY (x,y): 1. f XY ( x, y) 0 2. f XY ( x, y )dxdy 1 3. fXY (x,y) is discontinuous at finite set of values of x and y. 4. P( X , Y ) A f XY ( x, y )dxdy RA d b Pa X b, c Y d f XY ( x, y)dxdy c a Stochastic Processes – Multiple Random Variables 4-10 Correlation and Covariance: The (k,n)th moment of a bivariate random variable (X,Y) is defined by: x k y n p ( x , y ) or i j XY i j mkn E ( X kY n ) y j xi k n x y f XY ( x, y )dxdy The moment m11 E( XY ) is called the correlation of X and Y If m11 = 0 we say that X and Y are orthogonal Stochastic Processes – Multiple Random Variables 4-11 The Covariance of random variables X and Y is defined by: Cov( X ,Y ) XY E X X Y Y Cov( X , Y ) XY E XY E X EY If Cov (XY ) = 0 we say that X and Y are uncorrelated. If two random variables are independent they are uncorrelated, but opposite is not always true. Stochastic Processes – Multiple Random Variables 4-12 30 N – Variate random variables n – variate random variable or n – dimensional random vector T X X1 X 2 X 3 X n Covariance matrix 11 12 1n 12 22 2n K n1 n 2 nn Stochastic Processes – Multiple Random Variables 4-13