The estimators of V (HT) in (6.22) and (6.23) require knowledge of the joint inclusion probabilities ik.

Question:

The estimators of V (ṫHT) in (6.22) and (6.23) require knowledge of the joint inclusion probabilities πik. To use these formulas, the data file must contain an n × n matrix of the πik’s, which can dramatically increase the size of the data file; in addition, computing the variance estimator is complicated. If the joint inclusion probabilities πik could be approximated as a function of the πi’s, estimation would be simplified. Let ci = πi(1 − πi). Hájek (1964) (see Berger, 2004, for extensions) suggested approximating πik by

image text in transcribed
a. Does the set of ˜πik’s satisfy condition (6.18)? Can they be joint inclusion probabilities?
b. What is ˜πik if an SRS is taken? Show that if N is large, ˜πik is close to πik .
c. Show that if ˜πik is substituted for πik in (6.21), the expression for the variance can be written as
image text in transcribed
Where ei = ti /πi − A and
image text in transcribed
Write (6.21) as
image text in transcribed
d. We can estimate ṼHaj(ˆtHT) by
image text in transcribed
Where
image text in transcribed
That if an SRS of size n is taken, then ṼHaj(ṫHT) = N2(1 − n/N)s2 t .
Fantastic news! We've Found the answer you've been seeking!

Step by Step Answer:

Related Book For  book-img-for-question

Sampling Design And Analysis

ISBN: 627

2nd Edition

Authors: Sharon L. Lohr

Question Posted: