Probability and Statistics for Engineering and the Sciences
Probability and Statistics for Engineering and the Sciences
9th Edition
ISBN: 9781305251809
Author: Jay L. Devore
Publisher: Cengage Learning
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Chapter 10.1, Problem 10E

In single-factor ANOVA with I treatments and J observations per treatment, let μ = ( 1 / I ) μ i .

  a. Express E( X ¯ ..) in terms of µ. [Hint: X ¯ .. = (1/I) X ¯ i ]

  b. Determine E( E ( X ¯ i . 2 ) . [Hint: For any rv Y, E(Y2) = V(Y) + [ [ E ( Y ) 2 ] ]

  c. Determine E( X ¯ 2 ..).

  d. Determine E(SSTr) and then show that

     E ( M S T r ) = σ 2 + J I 1 ( μ i μ ) 2

  e. Using the result of part (d), what is E(MSTr) when H0 is true? When H0 is false, how does E(MSTr) compare to σ 2?

a.

Expert Solution
Check Mark
To determine

Find the expression for E(X¯..) in terms of μ.

Answer to Problem 10E

The expression for E(X¯..) in terms of μ is E(X¯..)=μ_.

Explanation of Solution

Given info:

A single factor ANOVA consists of I treatments and J observations per treatment, with μ=1Iμi.

Calculation:

Denote the sample mean corresponding to the ith treatment as X¯i. Then the grand mean is:

X¯..=1Ii=1IX¯i.

Taking expectation on both sides,

E(X¯..)=E(1Ii=1IX¯i.)=1IE(i=1IX¯i.)  (as I is non-random)=1Ii=1IE(X¯i.).

Now, X¯i. is the mean of sample observations from ith treatment, for i=1,2,...,I. Denote the expectation of each observation of the ith treatment is μi. For a random sample of size n taken from a distribution with mean μ, it is known that the sample mean has the expected value μ.

Thus,

E(X¯i.)=μi, for i=1,2,...,I.

Hence,

E(X¯..)=1Ii=1Iμi=μ.

Thus, the expression for E(X¯..) in terms of μ is E(X¯..)=μ_.

b.

Expert Solution
Check Mark
To determine

Find the value of E(X¯i.2).

Answer to Problem 10E

The value of E(X¯i.2) is σ2J+μi2_.

Explanation of Solution

Calculation:

Let σ2 be the population variance for each treatment. For a random sample of size n taken from a distribution with variance σ2, it is known that the sample mean has the variance σ2n.

Thus, the sample mean for the ith treatment,  X¯i is calculated for a total of J observations. Thus, X¯i has a distribution with variance V(X¯i)=σ2J.

Now, variance of a certain quantity is V(X)=E(X2)(E(X))2.

Thus,

E(X2)=V(X)+(E(X))2.

Thus,

E(X¯i.2)=V(X¯i)+(E(X¯i))2=σ2J+μi2.

Thus, value of E(X¯i.2) is σ2J+μi2_.

c.

Expert Solution
Check Mark
To determine

Find the value of E(X¯..2).

Answer to Problem 10E

The value of E(X¯..2) is σ2IJ+μ2_.

Explanation of Solution

Calculation:

From part a, E(X¯..)=μ.

The grand sample mean,  X¯.. is calculated for a total of IJ observations. Thus, X¯.. has a distribution with variance V(X¯..)=σ2IJ.

Thus,

E(X¯..)=V(X¯..)+(E(X¯..))2=σ2IJ+μ2.

Thus, value of E(X¯..2) is σ2IJ+μ2_.

d.

Expert Solution
Check Mark
To determine

Find the expression for E(SSTr).

Show that E(MSTr)=σ2+JI1(μiμ)2.

Answer to Problem 10E

The expression for E(SSTr) is E(SSTr)=(I1)σ2+Ji(μiμ)2_.

Explanation of Solution

Calculation:

For equal sample sizes, the treatment sum of squares, SSTr is:

SSTr=iJ(X¯i.X¯..)2=iJ(X¯i.22X¯i.X¯..+X¯..2)2=JiX¯i.22JX¯..iX¯i.+JX¯..2i1 (J and X¯..2 being independent of I)

Now,

X¯..=1Ii=1IX¯i..

Thus,

i=1IX¯i.=IX¯..

As a result,

SSTr=JiX¯i.22JX¯..(IX¯..)+IJX¯..2=JiX¯i.22IJX¯..2+IJX¯..2=JiX¯i.2IJX¯..2

Taking expectation of SSTr,

E(SSTr)=E(JiX¯i.2IJX¯..2)=JE(iX¯i.2)E(IJX¯..2)  (J being non-random)=JiE(X¯i.2)IJE(X¯..2)

From part b, E(X¯i.2)=σ2J+μi2.

From part c, E(X¯..2)=σ2IJ+μ2.

Substitute these values in the expression for E(SSTr):

E(SSTr)=Ji(σ2J+μi2)IJE(σ2IJ+μ2)=iσ2+Jiμi2σ2IJμ2=Iσ2+Jiμi2σ2IJμ2=(I1)σ2+J(iμi2Iμ2)

From the expansion of SSTr, it is seen that i(X¯i.X¯..)2=iX¯i.2IX¯..2. Thus,

E(SSTr)=(I1)σ2+J(iμi2Iμ2)=(I1)σ2+Ji(μiμ)2.

Thus, the expression for E(SSTr) is E(SSTr)=(I1)σ2+Ji(μiμ)2_.

It is known that the mean square treatment (MSTr) is, MSTr=SSTrI1.

Now, divide both sides of E(SSTr) by I1:

E(SSTr)I1=1I1[(I1)σ2+Ji(μiμ)2]E(SSTrI1)=σ2+JI1i(μiμ)2E(MSTr)=σ2+JI1i(μiμ)2_

e.

Expert Solution
Check Mark
To determine

Find the value of E(MSTr) when H0  is true, using the result of part d.

Compare this value to the value of E(MSTr) when H0  is false.

Answer to Problem 10E

The value of E(MSTr) when H0  is true, using the result of part d is σ2_.

The value of E(MSTr) is greater when H0  is false, than when H0  is true.

Explanation of Solution

Calculation:

The null hypothesis H0  is defined as:

 H0:μ1=μ2=...=μI=0.

When H0 is true, μi=0 for each i=1,2,...,I in the expression for H0.

Given that μ=1Iμi.

Thus, when μi=0 for each i=1,2,...,I, evidently,

μ=1Iμi=1Ii0=0.

Replace μi=0 for each i=1,2,...,I and μ=0 in the expression for E(MSTr):

E(MSTr)=σ2+JI1i(μiμ)2=σ2+JI1(0)=σ2+0=σ2_.

When H0 is false, μi0 for at least one i=1,2,...,I in the expression for H0.

In such a situation, (μiμ)0 for at least one i=1,2,...,I.

As a result, (μiμ)2>0 for at least one i=1,2,...,I.

Hence,

E(MSTr)=σ2+JI1i(μiμ)2>σ2+0E(MSTr)>σ2.

Thus, when H0  is false, the resultant value of E(MSTr) is greater than when H0  is true, leading to an overestimation of the population variance, σ2.

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Chapter 10 Solutions

Probability and Statistics for Engineering and the Sciences

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