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The moment generating function of random variable X is given by Moment generating function.

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Presentation on theme: "The moment generating function of random variable X is given by Moment generating function."— Presentation transcript:

1 The moment generating function of random variable X is given by Moment generating function

2 The moment generating function of random variable X is given by Moment generating function

3 The moment generating function of random variable X is given by Moment generating function

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6 More generally,

7 Example: X has the Poisson distribution with parameter

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14 If X and Y are independent, then The moment generating function of the sum of two random variables is the product of the individual moment generating functions

15 Let Y = X 1 + X 2 where X 1 ~Poisson( 1 ) and X 2 ~Poisson( 2 ) and X 1 and X 1 are independent, then

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17 Note: The moment generating function uniquely determines the distribution.

18 If X is a random variable that takes only nonnegative values, then for any a > 0, Markov’s inequality

19 Proof (in the case where X is continuous):

20 Let X 1, X 2,..., X n be a set of independent random variables having a common distribution, and let E[ X i ] = . then, with probability 1 Strong law of large numbers

21 Let X 1, X 2,..., X n be a set of independent random variables having a common distribution with mean  and variance  Then the distribution of Central Limit Theorem

22 Let X and Y be two discrete random variables, then the conditional probability mass function of X given that Y = y is defined as for all values of y for which P ( Y = y )>0. Conditional probability and conditional expectations

23 Let X and Y be two discrete random variables, then the conditional probability mass function of X given that Y = y is defined as for all values of y for which P ( Y = y )>0. The conditional expectation of X given that Y = y is defined as Conditional probability and conditional expectations

24 Let X and Y be two continuous random variables, then the conditional probability density function of X given that Y = y is defined as for all values of y for which f Y ( y )>0. The conditional expectation of X given that Y = y is defined as

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26 Proof:


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