Presentation is loading. Please wait.

Presentation is loading. Please wait.

Moment Generating Functions 1/33. Contents Review of Continuous Distribution Functions 2/33.

Similar presentations


Presentation on theme: "Moment Generating Functions 1/33. Contents Review of Continuous Distribution Functions 2/33."— Presentation transcript:

1 Moment Generating Functions 1/33

2 Contents Review of Continuous Distribution Functions 2/33

3 Continuous Distributions The Uniform distribution from a to b

4 The Normal distribution (mean , standard deviation  )

5 The Exponential distribution

6 The Gamma distribution Let the continuous random variable X have density function: Then X is said to have a Gamma distribution with parameters  and.

7 Moment Generating function of a Random Variable X

8 Examples 1.The Binomial distribution (parameters p, n)

9 The moment generating function of X, mX(t) is: 2.The Poisson distribution (parameter ) Moment Generating function of a Random Variable X

10 The moment generating function of X, mX(t) is: 3.The Exponential distribution (parameter ) Moment Generating function of a Random Variable X

11 The moment generating function of X, mX(t) is: 4.The Standard Normal distribution (  = 0,  = 1) Moment Generating function of a Random Variable X

12 We will now use the fact that We have completed the square This is 1 Moment Generating function of a Random Variable X

13 The moment generating function of X, mX(t) is: 4.The Gamma distribution (parameters , ) Moment Generating function of a Random Variable X

14 We use the fact Equal to 1 Moment Generating function of a Random Variable X

15 Properties of Moment Generating Functions 1. m X (0) = 1 Note: the moment generating functions of the following distributions satisfy the property mX(0) = 1

16 We use the expansion of the exponential function: Properties of Moment Generating Functions

17 Now Properties of Moment Generating Functions

18

19 Property 3 is very useful in determining the moments of a random variable X. Examples Properties of Moment Generating Functions

20

21

22 To find the moments we set t = 0. Properties of Moment Generating Functions

23

24

25

26 The moments for the exponential distribution can be calculated in an alternative way. This is note by expanding mX(t) in powers of t and equating the coefficients of tk to the coefficients in: Properties of Moment Generating Functions

27 Equating the coefficients of tk we get: Properties of Moment Generating Functions

28 The moments for the standard normal distribution We use the expansion of e u.

29 The moments for the standard normal distribution We now equate the coefficients tk in:

30 Properties of Moment Generating Functions If k is odd:  k = 0. For even 2k:

31 The log of Moment Generating Functions Let l X (t) = ln m X (t) = the log of the moment generating function

32 The log of Moment Generating Functions

33 Thus l X (t) = ln m X (t) is very useful for calculating the mean and variance of a random variable

34 The log of Moment Generating Functions Examples 1.The Binomial distribution (parameters p, n)

35 The log of Moment Generating Functions

36 2.The Poisson distribution (parameter ) The log of Moment Generating Functions

37 3.The Exponential distribution (parameter ) The log of Moment Generating Functions

38

39 4.The Standard Normal distribution (  = 0,  = 1) The log of Moment Generating Functions

40 Summary

41

42 Expectation of functions of Random Variables X is discrete X is continuous

43 Moments of Random Variables The k th moment of X

44 Moments of Random Variables The 1 th moment of X

45 The k th central moment of X where  =  1 = E(X) = the first moment of X. Moments of Random Variables

46 Rules for expectation Rules:


Download ppt "Moment Generating Functions 1/33. Contents Review of Continuous Distribution Functions 2/33."

Similar presentations


Ads by Google