Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Jointly distributed random variables We may define two or more random variables on the same sample space. Let X and Y be two real random variables defined on the same probability space ( S , F , P). The mapping variable. S 2 such that for s S , ( X ( s), Y ( s)) 2 is called a joint random ( X (s), Y (s)) R2 Y ( s) s S Figure Joint Random Variable Remark The above figure illustrates the mapping corresponding to a joint random variable. The joint random variable in the above case is denoted by ( X , Y ). We may represent a joint random variable as a two-dimensional vector X [ X Y]. We can extend the above definition to define joint random variables of any dimension. The mapping S n such that for s S , ( X 1 ( s), X 2 ( s),...., X n ( s)) n is called a n-dimensional random variable and denoted by the vector X [ X1 X 2 .... X n ]. Example1: Suppose we are interested in studying the height and weight of the students in a class. We can define the joint RV ( X , Y ) where X represents height and Y represents the weight. Example 2 Suppose in a communication system X Y is the corresponding noisy received signal. Then variable. is the transmitted signal and ( X , Y ) is a joint random Joint Probability Distribution Function Recall the definition of the distribution of a single random variable. The event { X x} was used to define the probability distribution function FX ( x). Given FX ( x), we can find the probability of any event involving the random variable. Y, the event X and Similarly, for two random variables { X x, Y y} { X x} {Y y} is considered as the representative event. The probability P{ X x, Y y} ( x, y) 2 is called the joint distribution function of the random variables X and Y and denoted by FX ,Y ( x, y ). Y ( x, y ) X FX ,Y ( x, y ) satisfies the following properties: FX ,Y ( x1 , y1 ) FX ,Y ( x2 , y2 ) if x1 x2 and y1 y2 If x1 x2 and y1 y2 , { X x1 , Y y1 } { X x2 , Y y2 } P{ X x1 , Y y1 } P{ X x2 , Y y2 } FX ,Y ( x1 , y1 ) FX ,Y ( x2 , y2 ) Y ( x2 , y2 ) ( x1 , y1 ) FX ,Y (, y ) FX ,Y ( x, ) 0 Note that { X , Y y} { X } FX ,Y (, ) 1. FX ,Y ( x, y ) is right continuous in both the variables. If x1 x2 and y1 y2 , P{x1 X x2 , y1 Y y2 } FX ,Y ( x2 , y2 ) FX ,Y ( x1 , y2 ) FX ,Y ( x2 , y1 ) FX ,Y ( x1 , y1 ) 0. ( x2 , y2 ) Y ( x1 , y1 ) X Given FX ,Y ( x, y ), - x , - y , the random variables X we have a complete description of and Y . FX ( x) FXY ( x,). To prove this {X x} {X x} {Y } FX ( x) P {X x} P { X x, Y } FXY ( x, ) Similarly FY ( y) FXY (, y). Given FX ,Y ( x, y ), - x , - y , a marginal distribution function. each of FX ( x) and FY ( y) is called Example Consider two jointly distributed random variables (1 e2 x )(1 e y ) x 0, y 0 FX ,Y ( x, y ) otherwise 0 X and Y with the joint CDF (a) Find the marginal CDFs (b) Find the probability P{1 X 2, 1 Y 2} (a) 1 e2 x FX ( x) lim FX ,Y ( x, y ) y 0 1 e y FY ( y ) lim FX ,Y ( x, y ) x 0 x0 elsewhere y0 elsewhere (b) P{1 X 2, 1 Y 2} FX ,Y (2, 2) FX ,Y (1,1) FX ,Y (1, 2) FX ,Y (2,1) (1 e4 )(1 e2 ) (1 e2 )(1 e1 ) (1 e2 )(1 e2 ) (1 e4 )(1 e1 ) =0.0272 Jointly distributed discrete random variables X and Y are two discrete random variables defined on the same probability space ( S , F , P) such that X takes values from the countable subset RX and Y takes values If from the countable subset RY . Then the joint random variable ( X , Y ) can take values from the countable subset in RX RY . The joint random variable ( X , Y ) is completely specified by their joint probability mass function p X ,Y ( x, y ) P{s | X ( s) x, Y ( s) y}, ( x, y) RX RY . Given p X ,Y ( x, y ), we can determine other probabilities involving the random variables X and Y . Remark p X ,Y ( x, y ) 0 for ( x, y) RX RY p X ,Y ( x, y ) 1 ( x , y ) RX RY This is because p X ,Y ( x, y ) P ( ( x , y ) RX RY ( x , y )RX RY {x, y}) =P( RX RY ) =P{s | ( X ( s), Y ( s)) ( RX RY )} =P ( S ) 1 Marginal Probability Mass Functions: The probability mass functions p X ( x) and pY ( y) are obtained from the joint probability mass function as follows pX ( x) P{ X x} RY = pX ,Y ( x, y ) yRY and similarly pY ( y ) p X ,Y ( x, y ) xRX These probability mass functions pX ( x) and pY ( y) obtained from the joint probability mass functions are called marginal probability mass functions. Example Consider the random variables X and Y with the joint probability mass function as tabulated in Table . The marginal probabilities are as shown in the last column and the last row X Y 0 1 p X ( x) 0 0.25 0.14 0.39 1 2 pY ( y ) 0.1 0.35 0.45 0.15 0.01 0.5 0.5 Joint Probability Density Function and Y are two continuous random variables and their joint distribution function is continuous in both x and y, then we can define joint probability density function f X ,Y ( x, y ) by If X f X ,Y ( x, y) 2 FX ,Y ( x, y), provided it exists. xy x y Clearly FX ,Y ( x, y ) f X ,Y (u , v)dvdu Properties of Joint Probability Density Function f X ,Y ( x, y ) is always a non-negative quantity. That is, f X ,Y ( x, y) 0 ( x, y) 2 f X ,Y ( x, y)dxdy 1 The probability of any Borel set B can be obtained by P( B) f X ,Y ( x, y)dxdy ( x , y )B Marginal density functions The marginal density functions f X ( x) and fY ( y) of two joint RVs X and Y are given by the derivatives of the corresponding marginal distribution functions. Thus f X ( x) d dx FX ( x) d dx FX ( x, ) d dx x ( f X ,Y (u , y ) dy ) du f X ,Y ( x, y ) dy and similarly fY ( y ) f X ,Y ( x, y ) dx Remark The marginal CDF and pdf are same as the CDF and pdf of the concerned single random variable. The marginal term simply refers that it is derived from the corresponding joint distribution or density function of two or more jointly random variables. With the help of the two-dimensional Dirac Delta function, we can define the joint pdf of two discrete jointly random variables. Thus for discrete jointly random variables X and Y . f X ,Y ( x, y) pX ,Y ( x, y) ( x xi , y y j ) ( xi , y j )RX RY . Example The joint density function f X ,Y ( x, y ) in the previous example is f X ,Y ( x, y ) 2 FX ,Y ( x, y ) xy 2 [(1 e 2 x )(1 e y )] x 0, y 0 xy 2e 2 x e y x 0, y 0 Example: The joint pdf of two random variables X f X ,Y ( x, y ) cxy 0 x 2, 0 y 2 0 otherwise Find c. Find FX , y ( x, y) Find f X ( x) and fY ( y ). What is the probability P(0 X 1, 0 Y 1) ? (i) (ii) (iii) (iv) c f X ,Y ( x, y )dydx c 2 0 1 4 1 y x uvdudv 4 0 0 x2 y 2 16 2 xy f X ( x) dy 0 y 2 4 0 FX ,Y ( x, y ) x 2 0 y2 Similarly fY ( y ) y 2 0 y2 2 0 xydydx and Y are given by P (0 X 1, 0 Y 1) FX ,Y (1,1) FX ,Y (0, 0) FX ,Y (0,1) FX ,Y (1, 0) 1 000 16 1 = 16 =