EBK MATHEMATICAL STATISTICS WITH APPLIC
EBK MATHEMATICAL STATISTICS WITH APPLIC
7th Edition
ISBN: 8220100251139
Author: Scheaffer
Publisher: YUZU
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Chapter 9.7, Problem 85E

Let Y1, Y2,…, Yn denote a random sample from the density function given by

f ( y | α , θ ) = { ( 1 Γ ( α ) θ α ) y α 1 e y / θ , y > 0 , 0 , elsewhere .

where α > 0 is known.

  1. a Find the MLE θ ^ of θ.
  2. b Find the expected value and variance of θ ^ .
  3. c Show that θ ^ is consistent for θ.
  4. d What is the best (minimal) sufficient statistic for θ in this problem?
  5. e Suppose that n = 5 and α = 2. Use the minimal sufficient statistic to construct a 90% confidence interval for θ. [Hint: Transform to a χ2 distribution.]

a.

Expert Solution
Check Mark
To determine

Provide the MLE θ^ for θ.

Answer to Problem 85E

The MLE θ^ for θ is Y¯a_.

Explanation of Solution

Calculation:

The likelihood function of θ is obtained as follows:

L(θ)=L(Y1,Y2,...,Yn|θ)=i=1n1ΓαθαYiα1eYiθ=ei=1nYiθi=1nYiα1(Γα)nθnα

The log likelihood function is obtained as follows:

l(θ)=log(ei=1nYiθi=1nYiα1(Γα)nθnα)=nlog(Γα)nαlog(θ)+(α1)i=1nlogYii=1nYiθ

Obtain the first order derivative of the log likelihood function and equate it with 0.

Hence,

d(l(θ))dθ=0d(nlog(Γα)nαlog(θ)+(α1)i=1nlogYii=1nYiθ)dθ=0nαθ+i=1nYiθ2=0θ^=i=1nYinα=Y¯α

Thus, the MLE θ^ for θ is Y¯a_.

b.

Expert Solution
Check Mark
To determine

Compute the expected value and variance of θ^.

Answer to Problem 85E

The expected value and variance of θ^ are θ_and θ2αn_, respectively.

Explanation of Solution

Calculation:

It is known that if a random variable Y follows Gamma distribution with parameters α and β, then the expected value and the variance of Y are αβand αβ2n, respectively.

From the Part (a), the expression of θ^ is obtained as θ^=Y¯α.

Thus, the value of E(θ^) is obtained as follows:

E(θ^)=E(Y¯α)=E(Y¯)α=αθα=θ

Similarly, the value of V(θ^) is obtained as follows:

V(θ^)=V(Y¯α)=V(Y¯)α2=αθ2α2n=θ2αn

Thus, the expected value and variance of θ^ are θ_and θ2αn_, respectively.

c.

Expert Solution
Check Mark
To determine

Prove that θ^ is an consistent estimator of θ.

Explanation of Solution

Calculation:

From Part (b), it is obtained that the expected value and variance of θ^ are θand θ2αn, respectively.

Hence, for any positive number ε it is obtained that,

limnP(|θ^θ|>ε)=P(|Y¯θ|>ε)limnV(Y¯)ε2=limnθ2nαε20

According to Definition 9.2, it can be said that θ^ is an consistent estimator of θ.

d.

Expert Solution
Check Mark
To determine

Find the best (minimal) sufficient statistic for θ in this problem.

Answer to Problem 85E

The best (minimal) sufficient statistic for θ in this problem is i=1nYi_.

Explanation of Solution

Calculation:

From Part (a), the likelihood function of θ is obtained as follows:

L(θ)=ei=1nYiθi=1nYiα1(Γα)nθnα=g(u,θ)h(Y1,Y2,...,Yn)

Here, g(u,θ)=ei=1nYiθ1(Γα)nθnαh(Y1,Y2,...,Yn)=i=1nYiα1 and u=i=1nYi.

Thus, according to Theorem 9.4 (factorization criterion), it can be said that the sufficient statistic for θ is i=1nYi.

Consider another sample of random variables, such that, X1,X2,...,Xn, that follows Gamma distribution with parameters αand θ.

Hence, the ration of the likelihood function for this two samples are:

 L(Y1,Y2,...,Yn|θ)L(X1,X2,...,Xn|θ)=ei=1nYiθi=1nYiα1(Γα)nθnαei=1nXiθi=1nXiα1(Γα)nθnα=i=1nYiα1i=1nXiα1e(i=1nYiθi=1nXiθ)

The above ratio will be independent of θ if and only if the term in the power of exponential term is equal to 0.

That is,

i=1nYiθi=1nXiθ=0 or i=1nYi=i=1nXi.

By the method of Lehmann-Scheffe, g(Y1,Y2,,Yn)=i=1nYi.

Therefore, the best (minimal) sufficient statistic for θ in this problem is i=1nYi_.

e.

Expert Solution
Check Mark
To determine

Construct a 90% confidence interval of θ for n=5and α=2.

Answer to Problem 85E

The 90% confidence interval of θ for n=5and α=2 is (i=15Yi15.7052,i=15Yi5.4254).

Explanation of Solution

Calculation:

From Part (d), it is obtained that the minimal sufficient statistic for θ is i=1nYi.

According to question, Yi~Γ(2,θ).

As, Yi's are independent and identically distributed it can be said that,

i=15Yi~Γ(2×5,θ)2i=15Yiθ~Γ(10,θ)2i=15Yiθ~χ202

For 90% confidence interval the level of significate α is 10.90=0.10. It implies that there will be 5% area beyond both sides of the confidence limits.

From Table 6 Percentage Points of the χ2 Distribution the chi square critical value corresponding to level of significance of 0.05 and degrees of freedom 20 is obtained as χ0.05,202=31.4104 and the chi square critical value corresponding to level of significance of 0.95 and degrees of freedom 20 is obtained as χ0.95,202=10.8508.

The required 90% confidence interval is obtained as follows:

P(χ1α2,2022i=15Yiθχα2,202)=0.90P(1χ0.95,202θ2i=15Yi1χ0.05,202)=0.9P(2i=15Yiχ0.05,202θ2i=15Yiχ0.95,202)=0.9P(2i=15Yi31.4104θ2i=15Yi10.8508)=0.9P(i=15Yi15.7052θi=15Yi5.4254)=0.9

Thus, the 90% confidence interval of θ for n=5and α=2 is (i=15Yi15.7052,i=15Yi5.4254).

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Chapter 9 Solutions

EBK MATHEMATICAL STATISTICS WITH APPLIC

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