LOYOLA COLLEGE (AUTONOMOUS), CHENNAI – 600 034
B.Sc. DEGREE EXAMINATION – STATISTICS
FIFTH SEMESTER – NOVEMBER 2012
ST 5504 – ESTIMATION THEORY
Date : 01/11/2012 Dept. No. Max. : 100 Marks
Time : 9:00 – 12:00
PART – A
Answer ALL the questions: (10 x 2 = 20)
- Define Unbiasedness.
- If T is an unbiased estimator of θ, show that T2 is a biased estimator for θ2.
- Define Efficiency.
- Let X1, X2, …, Xn be a random sample from a population with pdf
f( x, θ) = θ x θ – 1, 0 < x < 1, θ > 0.
Show that is sufficient for θ.
- Define BLUE.
- What is meant by prior and posterior distribution?
- Define sufficiency.
- Write down the normal equation associated with a simple regression model.
- Define Completeness.
- Define MVB.
PART- B
Answer any FIVE questions: (5 x 8 = 40)
- State and prove the sufficient condition for an estimator to be consistent.
- Let X1, X2, …, Xn be a random sample from a Bernoulli distribution:
Show that is a complete sufficient statistics for θ.
- Mention the properties of MLE.
- A random sample X1, X2, X3, X4, X5 of size 5 is drawn from a normal population with unknown mean µ. Consider the following estimators to estimate µ:
(i) (ii) (iii) where λ is
such that t3 is an unbiased estimator of m.
- Find λ.
- Are t1 and t2 unbiased?
- Which of the three is the best estimator?
- State and prove Cramer – Rao Inequality.
- Samples of sizes n1 and n2 are drawn from two populations with mean T1 and T2 and common variance σ2. Find the BLUE of l1T1 + l2T2.
- Prove that if T1 and T2 are UMVUE of g(θ) then T1 = T2 almost surely.
- Obtain the UMVUE of the parameter l for the poisson distribution based on a random sample of size n.
PART – C
Answer any TWO questions: (2 x 20 = 40)
- a) State and prove Rao – Blackwell theorem.
- b) Show that if the MLE exists uniquely then it is a function of the sufficient statistic.
- a) State and prove the necessary and sufficient for a parametric function to be linearly
estimable.
- b) Prove that the MLE of α of a population having density function: 0 < x < α
for a sample of size one is 2x, x being the sample value. Show also that the estimate is
biased.
- a) State and prove factorization theorem.
- b) Let (X1, X2, …, Xn) be a random sample from N(µ, σ2) . Obtain the Cramer – Rao
lower bound for the unbiased estimator of m.
- a) Explain the method of moments.
- b) Let X1, X2, …, Xn be a random sample from Bernoulli distribution b(1, θ). Obtain the
Bayes estimator for θ by taking a suitable prior.
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