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Page 1: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Expectation

Page 2: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected value of X, E(X) is defined to be:

i ix i

E X xp x x p x

E X xf x dx

and if X is continuous with probability density function f(x)

Page 3: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example: Suppose we are observing a seven game series where the teams are evenly matched and the games are independent. Let X denote the length of the series. Find:

1. The distribution of X. 2. the expected value of X, E(X).

Page 4: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Solution: Let A denote the event that team A, wins and B denote the event that team B wins. Then the sample space for this experiment (together with probabilities and values of X) would be (next slide):

Page 5: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

outcome AAAA BBBB BAAAA ABAAA AABAA AAABA

Prob (½ )4 (½ )4 (½ )5 (½ )5 (½ )5 (½ )5

X 4 4 5 5 5 5

outcome ABBBB BABBB BBABB BBBAB ABBBB BBAAAA

Prob (½ )5 (½ )5 (½ )5 (½ )5 (½ )6 (½ )6

X 5 5 5 5 6 6

outcome BABAAA BAABAA BAAABA ABBAAA ABABAA ABAABA

Prob (½ )6 (½ )6 (½ )6 (½ )6 (½ )6 (½ )6

X 6 6 6 6 6 6

outcome AABBAA AABABA AAABBA AABBBB ABABBB ABBABB

Prob (½ )6 (½ )6 (½ )6 (½ )6 (½ )6 (½ )6

X 6 6 6 6 6 6

- continued

At this stage it is recognized that it might be easier to determine the distribution of X using counting techniques

Page 6: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

• The possible values of X are {4, 5, 6, 7}• The probability of a sequence of length x is (½)x

• The series can either be won by A or B.• If the series is of length x and won by one of the

teams (A say) then the number of such series is:1

4

x

x

In a series of that lasts x games, the winning team wins 4 games and the losing team wins x - 4 games. The winning team has to win the last games. The no. of ways of choosing the games that the losing team wins is:

1

4

x

x

Page 7: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Thus

11 11 1

24 42 2

x xx xp x P X x

x x

The no. of ways of choosing the games that the losing team wins

The no. of ways of choosing the winning team

The probability of a series of length x.

x 4 5 6 7

p(x)33 1 1

0 2 8

44 1 1

1 2 4

55 1 5

2 2 16

66 1 5

3 2 16

Page 8: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

i ix i

E X xp x x p x

1316

1 1 5 54 5 6 7

8 4 16 16

8 20 30 35 935

16 16

Page 9: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.1

0.2

0.3

0.4

0 1 2 3 4 5 6 7

Interpretation of E(X)

1. The expected value of X, E(X), is the centre of gravity of the probability distribution of X.

2. The expected value of X, E(X), is the long-run average value of X. (shown later –Law of Large Numbers)

E(X)

Page 10: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example: The Binomal distribution

Let X be a discrete random variable having the Binomial distribution. i. e. X = the number of successes in n independent repetitions of a Bernoulli trial. Find the expected value of X, E(X).

1 0,1,2,3, ,n xxn

p x p p x nx

0 0

1n n

n xx

x x

nE X xp x x p p

x

1

1

1

!1

! !

nn xx

x

nn xx

x

nx p p

x

nx p p

x n x

Page 11: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Solution:

0 0

1n n

n xx

x x

nE X xp x x p p

x

1

1

1

!1

! !

nn xx

x

nn xx

x

nx p p

x

nx p p

x n x

1

!1

1 ! !

nn xx

x

np p

x n x

1 21 2! !1 1

0! 1 ! 1! 2 !

n nn np p p p

n n

1! !

12 !1! 1 !0!

n nn np p p

n n

Page 12: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

1 20 11 ! 1 !1 1

0! 1 ! 1! 2 !

n nn nnp p p p p

n n

2 11 ! 1 !

12 !1! 1 !0!

n nn np p p

n n

1 20 11 11 1

0 1n nn n

np p p p p

2 11 11

2 1n nn n

p p pn n

1 11 1

n nnp p p np np

Page 13: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example: A continuous random variable

The Exponential distribution

Let X have an exponential distribution with parameter .

This will be the case if:

1. P[X ≥ 0] = 1, and

2. P[ x ≤ X ≤ x + dx| X ≥ x] = dx.

The probability density function of X is:

0

0 0

xe xf x

x

The expected value of X is:

0

xE X xf x dx x e dx

Page 14: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

We will determine

udv uv vdu

0

xE X xf x dx x e dx

xx e dx using integration by parts.

In this case and xu x dv e dx

Hence and xdu dx v e

Thus x x xx e dx xe e dx 1

x xxe e

0

00

1 x x xE X x e dx xe e

1 10 0 0

Page 15: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Summary:

1E X

If X has an exponential distribution with parameter then:

Page 16: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example:

The Uniform distribution

Suppose X has a uniform distribution from a to b.

Then:

1

0 ,b a a x b

f xx a x b

The expected value of X is:

1b

b aa

E X xf x dx x dx

2 2 2

1

2 2 2

b

b a

a

x b a a b

b a

Page 17: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example:

The Normal distribution

Suppose X has a Normal distribution with parameters and .

Then: 2

221

2

x

f x e

The expected value of X is:

2

221

2

x

E X xf x dx x e dx

xz

Make the substitution:1

and dz dx x z

Page 18: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Hence

Now

2

21

2

z

E X z e dz

2 2

2 21

2 2

z z

e dz ze dz

2 2

2 21

1 and 02

z z

e dz ze dz

Thus E X

Page 19: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example:

The Gamma distribution

Suppose X has a Gamma distribution with parameters and .

Then: 1 0

0 0

xx e xf x

x

Note:

This is a very useful formula when working with the Gamma distribution.

1

0

1 if 0,xf x dx x e dx

Page 20: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

The expected value of X is:

1

0

xE X xf x dx x x e dx

This is now equal to 1. 0

xx e dx

1

10

1

1xx e dx

1

Page 21: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Thus if X has a Gamma ( ,) distribution then the expected value of X is:

E X

Special Cases: ( ,) distribution then the expected value of X is:

1. Exponential () distribution: = 1, arbitrary

1E X

2. Chi-square () distribution: = /2, = ½.

21

2

E X

Page 22: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

The Gamma distribution

0

0.05

0.1

0.15

0.2

0.25

0.3

0 2 4 6 8 10

E X

Page 23: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.05

0.1

0.15

0.2

0.25

0 5 10 15 20 25

The Exponential distribution

1E X

Page 24: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.02

0.04

0.06

0.08

0.1

0.12

0.14

0 5 10 15 20 25

The Chi-square (2) distribution

E X

Page 25: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Expectation of functions of Random Variables

Page 26: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

DefinitionLet X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected value of g(X), E[g(X)] is defined to be:

i ix i

E g X g x p x g x p x

E g X g x f x dx

and if X is continuous with probability density function f(x)

Page 27: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example:

The Uniform distribution

Suppose X has a uniform distribution from 0 to b.

Then:

1 0

0 0,b x b

f xx x b

Find the expected value of A = X2 . If X is the length of a side of a square (chosen at random form 0 to b) then A is the area of the square

2 2 2 1b

b aa

E X x f x dx x dx

3 3 3 2

1

0

0

3 3 3

b

b

x b b

b

= 1/3 the maximum area of the square

Page 28: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example:

The Geometric distribution

Suppose X (discrete) has a geometric distribution with parameter p.

Then: 1

1 for 1, 2,3,x

p x p p x

Find the expected value of X A and the expected value of X2.

2 32 2 2 2 2 2

1

1 2 1 3 1 4 1x

E X x p x p p p p p p p

2 3

1

1 2 1 3 1 4 1x

E X xp x p p p p p p p

Page 29: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Recall: The sum of a geometric Series

Differentiating both sides with respect to r we get:

2 3

1

aa ar ar ar

r

2 3 1or with 1, 1

1a r r r

r

22 32

11 2 3 4 1 1 1

1r r r r

r

Differentiating both sides with respect to r we get:

Page 30: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Thus

This formula could also be developed by noting:

2 3

2

11 2 3 4

1r r r

r

2 31 2 3 4r r r 2 31 r r r 2 3r r r 2 3r r

3r 2 31

1 1 1 1

r r r

r r r r

2 32

1 1 1 11

1 1 1 1r r r

r r r r

Page 31: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

This formula can be used to calculate:

2 3

1

1 2 1 3 1 4 1x

E X xp x p p p p p p p

2 31 2 3 4 where 1p r r r r p

2 31 2 3 4 where 1p r r r r p 22

1 1 1= =

1p p

r p p

Page 32: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

To compute the expected value of X2.

2 32 2 2 2 2 2

1

1 2 1 3 1 4 1x

E X x p x p p p p p p p

2 2 2 2 2 31 2 3 4p r r r

we need to find a formula for

2 2 2 2 2 3 2 1

1

1 2 3 4 x

x

r r r x r

Note 2 31

0

11

1x

x

r r r r S rr

Differentiating with respect to r we get

1 2 3 1 11 2

0 1

11 2 3 4

1x x

x x

S r r r r xr xrr

Page 33: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Differentiating again with respect to r we get

2 31 2 3 2 4 3 5 4S r r r r

32 23

1 2

21 1 2 1 1

1x x

x x

x x r x x r rr

23

2

21

1x

x

x x rr

Thus

2 2 2

32 2

2

1x x

x x

x r xrr

2 2 2

32 2

2

1x x

x x

x r xrr

Page 34: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

implies

2 2 23

2 2

2

1x x

x x

x r xrr

2 2 2 2 2 3 2

3

22 3 4 5 2 3 4

1r r r r r

r

Thus

2 2 2 2 3 2

3

21 2 3 4 1 2 3 4

1r r r r r r

r

2 3

3

21 2 3 4

1

rr r r

r

3 2 3 3

2 1 2 1 1

1 1 1 1

r r r r

r r r r

3

2 if 1

pr p

p

Page 35: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Thus

2 2 2 2 2 31 2 3 4E X p r r r

2

2 p

p

Page 36: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Moments of Random Variables

Page 37: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Definition

Let X be a random variable (discrete or continuous), then the kth moment of X is defined to be:

kk E X

-

if is discrete

if is continuous

k

x

k

x p x X

x f x dx X

The first moment of X , = 1 = E(X) is the center of gravity of the distribution of X. The higher moments give different information regarding the distribution of X.

Page 38: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Definition

Let X be a random variable (discrete or continuous), then the kth central moment of X is defined to be:

0 k

k E X

-

if is discrete

if is continuous

k

x

k

x p x X

x f x dx X

where = 1 = E(X) = the first moment of X .

Page 39: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

The central moments describe how the probability distribution is distributed about the centre of gravity, .

01 E X

and is denoted by the symbol var(X).

= 2nd central moment. 202 E X

depends on the spread of the probability distribution of X about .

202 E X is called the variance of X.

Page 40: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

202 E X is called the standard

deviation of X and is denoted by the symbol .

20 22var X E X

The third central moment

contains information about the skewness of a distribution.

303 E X

Page 41: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

The third central moment

contains information about the skewness of a distribution.

303 E X

Measure of skewness

0 03 3

1 3 23 02

Page 42: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.01

0.02

0.03

0.04

0.05

0.06

0.07

0.08

0 5 10 15 20 25 30 35

03 0, 0

Positively skewed distribution

Page 43: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.01

0.02

0.03

0.04

0.05

0.06

0.07

0.08

0 5 10 15 20 25 30 35

03 10, 0

Negatively skewed distribution

Page 44: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.01

0.02

0.03

0.04

0.05

0.06

0.07

0.08

0.09

0 5 10 15 20 25 30 35

03 10, 0

Symmetric distribution

Page 45: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

The fourth central moment

Also contains information about the shape of a distribution. The property of shape that is measured by the fourth central moment is called kurtosis

404 E X

The measure of kurtosis

0 04 4

2 24 02

3 3

Page 46: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0.01

0.02

0.03

0.04

0.05

0.06

0.07

0.08

0.09

0 5 10 15 20 25 30 35

040, moderate in size

Mesokurtic distribution

Page 47: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0 20 40 60 80

040, small in size

Platykurtic distribution

Page 48: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0 20 40 60 80

040, large in size

leptokurtic distribution

Page 49: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Example: The uniform distribution from 0 to 1

1 0 1

0 0, 1

xf x

x x

11 1

0 0

11

1 1

kk k

k

xx f x dx x dx

k k

Finding the moments

Page 50: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Finding the central moments:

1

0 12

0

1kk

k x f x dx x dx

12making the substitution w x

1122

1 12 2

1 11 1 12 20

1 1

k kkk

k

ww dw

k k

1

1

1if even1 1

2 12 1

0 if odd

kk

k

kk

kk

Page 51: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Thus

0 0 02 3 42 4

1 1 1 1Hence , 0,

2 3 12 2 5 80

02

1var

12X

02

1var

12X

03

1 30

The standard deviation

The measure of skewness

04

1 24

1 803 3 1.2

1 12

The measure of kurtosis

Page 52: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Rules for expectation

Page 53: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Rules:

if is discrete

if is continuous

x

g x p x X

E g Xg x f x dx X

1. where is a constantE c c c

if then g X c E g X E c cf x dx

c f x dx c

Proof

The proof for discrete random variables is similar.

Page 54: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2. where , are constantsE aX b aE X b a b

if then g X aX b E aX b ax b f x dx

Proof

The proof for discrete random variables is similar.

a xf x dx b f x dx

aE X b

Page 55: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2023. var X E X

2 22x x f x dx

Proof

The proof for discrete random variables is similar.

22 22 1E X E X

2 2var X E X x f x dx

2 22x f x dx xf x dx f x dx

2 2

2 2 12E X E X

Page 56: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

24. var varaX b a X

Proof

2var aX baX b E aX b

2E aX b a b

22E a X

22 2 vara E X a X

aX b E aX b aE X b a b

Page 57: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Moment generating functions

Page 58: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Definition

if is discrete

if is continuous

x

g x p x X

E g Xg x f x dx X

Let X denote a random variable, Then the moment generating function of X , mX(t) is defined by:

Recall

if is discrete

if is continuous

tx

xtX

Xtx

e p x X

m t E ee f x dx X

Page 59: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Examples

1 0,1,2, ,n xxn

p x p p x nx

The moment generating function of X , mX(t) is:

1. The Binomial distribution (parameters p, n)

tX txX

x

m t E e e p x

0

1n

n xtx x

x

ne p p

x

0 0

1n nx n xt x n x

x x

n ne p p a b

x x

1nn ta b e p p

Page 60: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0,1,2,!

x

p x e xx

The moment generating function of X , mX(t) is:

2. The Poisson distribution (parameter )

tX txX

x

m t E e e p x 0 !

xntx

x

e ex

0 0

using ! !

t

xt xe u

x x

e ue e e e

x x

1te

e

Page 61: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

0 0

xe xf x

x

The moment generating function of X , mX(t) is:

3. The Exponential distribution (parameter )

0

tX tx tx xXm t E e e f x dx e e dx

0 0

t xt x e

e dxt

undefined

tt

t

Page 62: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2

21

2

x

f x e

The moment generating function of X , mX(t) is:

4. The Standard Normal distribution ( = 0, = 1)

tX txXm t E e e f x dx

2 22

1

2

x tx

e dx

2

21

2

xtxe e dx

Page 63: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2 2 2 22 2

2 2 21 1

2 2

x tx t x tx t

Xm t e dx e e dx

We will now use the fact that 2

221

1 for all 0,2

x b

ae dx a ba

We have completed the square

22 2

2 2 21

2

x tt t

e e dx e

This is 1

Page 64: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

1 0

0 0

xx e xf x

x

The moment generating function of X , mX(t) is:

4. The Gamma distribution (parameters , )

tX txXm t E e e f x dx

1

0

tx xe x e dx

1

0

t xx e dx

Page 65: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

We use the fact

1

0

1 for all 0, 0a

a bxbx e dx a b

a

1

0

t xXm t x e dx

1

0

t xtx e dx

tt

Equal to 1

Page 66: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Properties of Moment Generating Functions

Page 67: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

1. mX(0) = 1

0, hence 0 1 1tX XX Xm t E e m E e E

v) Gamma Dist'n Xm tt

2

2iv) Std Normal Dist'n t

Xm t e

iii) Exponential Dist'n Xm tt

1ii) Poisson Dist'n

te

Xm t e

i) Binomial Dist'n 1nt

Xm t e p p

Note: the moment generating functions of the following distributions satisfy the property mX(0) = 1

Page 68: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2 33212. 1

2! 3! !kk

Xm t t t t tk

We use the expansion of the exponential function:2 3

12! 3! !

ku u u u

e uk

tXXm t E e

2 32 31

2! 3! !

kkt t t

E tX X X Xk

2 3

2 312! 3! !

kkt t t

tE X E X E X E Xk

2 3

1 2 312! 3! !

k

k

t t tt

k

Page 69: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0

3. 0k

kX X kk

t

dm m t

dt

Now 2 332

112! 3! !

kkXm t t t t t

k

2 1321 2 3

2! 3! !kk

Xm t t t ktk

2 13

1 2 2! 1 !kkt t t

k

1and 0Xm

24

2 3 2! 2 !kk

Xm t t t tk

2and 0Xm continuing we find 0kX km

Page 70: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

i) Binomial Dist'n 1nt

Xm t e p p

Property 3 is very useful in determining the moments of a random variable X.

Examples

11

nt tXm t n e p p pe

10 010 1

n

Xm n e p p pe np

2 11 1 1

n nt t t t tXm t np n e p p e p e e p p e

2

2

1 1 1

1 1

nt t t t

nt t t

npe e p p n e p e p p

npe e p p ne p p

2 221np np p np np q n p npq

Page 71: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

1ii) Poisson Dist'n

te

Xm t e

1 1t te e ttXm t e e e

1 1 2 121t t te t e t e tt

Xm t e e e e

1 2 12 2 1t te t e tt t

Xm t e e e e

1 2 12 3t te t e tte e e

1 3 1 2 13 23t t te t e t e t

e e e

Page 72: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

0 1 0

1 0e

Xm e

0 01 0 1 02 22 0

e e

Xm e e

3 0 2 0 0 3 23 0 3 3t

Xm e e e

To find the moments we set t = 0.

Page 73: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

iii) Exponential Dist'n Xm tt

1

X

d tdm t

dt t dt

2 21 1t t

3 32 1 2Xm t t t

4 42 3 1 2 3Xm t t t

5 54 2 3 4 1 4!Xm t t t

1

!kk

Xm t k t

Page 74: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

Thus

2

1

10Xm

3

2 2

20 2Xm

1 !

0 !kk

k X k

km k

Page 75: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2 33211

2! 3! !kk

Xm t t t t tk

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:

2 31 11

11Xm t u u u

tt u

2 3

2 31

t t t

Equating the coefficients of tk we get:

1 ! or

!k

kk k

k

k

Page 76: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

2

2t

Xm t e

The moments for the standard normal distribution

We use the expansion of eu.2 3

0

1! 2! 3! !

k ku

k

u u u ue u

k k

2 2 2

22

2

2 3

2 2 2

212! 3! !

t

kt t t

tXm t e

k

2 4 6 212 2 3

1 1 11

2 2! 2 3! 2 !k

kt t t t

k

We now equate the coefficients tk in:

2 222

112! ! 2 !

k kk kXm t t t t t

k k

Page 77: Expectation. Let X denote a discrete random variable with probability function p(x) (probability density function f(x) if X is continuous) then the expected

If k is odd: k = 0.

2 1

2 ! 2 !k

kk k

For even 2k:

2

2 !or

2 !k k

k

k

1 2 3 4 2

2! 4!Thus 0, 1, 0, 3

2 2 2!