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Chapter 5 Joint Probability Distribution

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Title: Chapter 5 Joint Probability Distribution


1
Chapter 5Joint Probability Distribution
2
Introduction
  • If X and Y are two random variables, the
    probability distribution that defines their
    simultaneous behavior is a Joint Probability
    Distribution.
  • Examples
  • Signal transmission X is high quality signals
    and Y low quality signals.
  • Molding X is the length of one dimension of
    molded part, Y is the length of another
    dimension.
  • THUS, we may be interested in expressing
    probabilities expressed in terms of X and Y,
    e.g., P(2.95 lt X lt 3.05 and 7.60 lt Y lt 7.8)

3
Two discrete random variables
  • Range of random variables (X,Y) is the set of
    points (x,y) in 2D space for which the
    probability that X x and Y y is positive.
  • If X and Y are discrete random variables, the
    joint probability distribution of X and Y is a
    description of the set of points (x,y) in the
    range of (X,Y) along with the probability of each
    point.
  • Sometimes referred to as Bivariate probability
    distribution, or Bivariate distribution.

4
Example 5.1 Joint probability distribution for X
and Y
5
Joint probability mass function
  • The joint probability mass function of the
    discrete random variables X and Y, denoted as
    fXY(x,y) satisfies

6
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7
Marginal probability distributions
  • Individual probability distribution of a random
    variable is referred to as its Marginal
    Probability Distribution.
  • Marginal probability distribution of X can be
    determined from the joint probability
    distribution of X and other random variables.
  • Marginal probability distribution of X is found
    by summing the probabilities in each column, for
    Y, summation is done in each row.

8
Example 5-3 Marginal probability distribution
for X and Y
9
Marginal probability distributions (Cont.)
  • If X and Y are discrete random variables with
    joint probability mass function fXY(x,y), then
    the marginal probability mass function of X and Y
    are
  • where Rx denotes the set of all points in the
    range of (X, Y) for which X x and Ry denotes
    the set of all points in the range of (X, Y) for
    which Y y

10
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11
Mean and Variance
  • If the marginal probability distribution of X has
    the probability function f(x), then
  • R Set of all points in the range of (X,Y).
  • Example 5-4.

12
Conditional probability
  • Example 5-5.
  • Given discrete random variables X and Y with
    joint probability mass function fXY(X,Y), the
    conditional probability mass function of Y given
    X x is
  • fYx(y) fXY(x,y)/fX(x) for fX(x) gt 0

13
Conditional probability (Cont.)
  • Because a conditional probability mass function
    fYx(y) is a probability mass function for all y
    in Rx, the following properties are satisfied
  • (1) fYx(y) ? 0
  • (2) fYx(y) 1
  • (3) P(YyXx) fYx(y)
  • Example 5-6.

14
Example 5-6 Conditional probability
distribution for Y given X
15
Conditional probability (Cont.)
  • Let Rx denote the set of all points in the range
    of (X,Y) for which Xx. The conditional mean of
    Y given X x, denoted as E(Yx) or ?Yx, is
  • And the conditional variance of Y given X x,
    denoted as V(Yx) or ?2Yx is
  • Example 5-7

16
Independence
  • Example 5-8
  • For discrete random variables X and Y, if any one
    of the following properties is true, the others
    are also true, and X and Y are independent.
  • (1) fXY(x,y) fX(x) fY(y) for all x and y
  • (2) fYx(y) fY(y) for all x and y with fX(x) gt
    0
  • (3) fXy(x) fX(x) for all x and y with fY(y) gt
    0
  • (4) P(X ? A, Y ? B) P(X ? A)P(Y ? B) for any
    sets A and B in the range of X and Y
    respectively.
  • If we find one pair of x and y in which the
    equality fails, X and Y are not independent.

17
Joint and Marginal probability Conditional
probability distribution for X and
Y Distribution for X and Y
18
Rectangular Range for (X, Y)
  • If the set of points in two-dimensional space
    that receive positive probability under fXY (x,
    y) does not form a rectangle, X and Y are not
    independent because knowledge of X can restrict
    the range of values of Y that receive positive
    probability.
  • Example 5-1
  • If the set of points in two dimensional space
    that receives positive probability under fXY(x,
    y) forms a rectangle, independence is possible
    but not demonstrated. One of the conditions must
    still be verified.

19
ANNOUNCEMENTS
  • Assignment VII
  • 5, 9, 10, 11, 12

20
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21
Two continuous random variables
  • Analogous to the probability density function of
    a single continuous random variable, a Joint
    probability density function can be defined over
    two-dimensional space.

22
Joint probability distribution
  • A joint probability density function for the
    continuous random variables X and Y, denoted as
    fXY(x,y), satisfies the following properties
  • (1) fXY(x,y) ? 0 for all x, y
  • (2)
  • (3) For any range R of two-dimensional space

23
Joint probability distribution (Cont.)
  • The probability that (X,Y) assumes a value in the
    region R equals the volume of the shaded region.

24
Joint probability density function for the
lengths of different dimensions of an
injection-molded part P(2.95 lt X lt 3.05,7.60 lt
Y lt 7.80)
25
Joint probability distribution (Cont.)
  • Example 5-15

26
Marginal probability distribution
  • If the joint probability density function of
    continuous random variables X and Y is fXY(x,y),
    the marginal probability density function of X
    and Y are
  • and
  • where Rx denotes the set of all points in the
    range of (X,Y) for which X x and Ry denotes the
    set of all points in the range of (X,Y) for which
    Y y.

27
Marginal probability distribution (Cont.)
  • A probability involving only one random variable,
    e.g., P(a lt X lt b), can be found from the
    marginal probability of X or from the joint
    probability distribution of X and Y.
  • For example
  • P(a lt x lt b) P(a lt x lt b, - ? lt Y lt ?)

28
Example 5-16
29
Mean and variance
  • E(x) ?x
  • Where Rx denotes the set of all points in the
    range of (X,Y) for which Xx and Ry denotes the
    set of all points in the range of (X,Y)

30
ANNOUNCEMENTS
  • Assignment VII
  • 5, 9, 10, 11, 12
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