Rate of convergence for asymptotic variance of the Horvitz–Thompson estimator
✍ Scribed by Yves G. Berger
- Publisher
- Elsevier Science
- Year
- 1998
- Tongue
- English
- Weight
- 125 KB
- Volume
- 74
- Category
- Article
- ISSN
- 0378-3758
No coin nor oath required. For personal study only.
✦ Synopsis
Drawing distinct units without replacement and with unequal probabilities from a population is a problem often considered in the literature (e.g. Hanif and Brewer, 1980, Int. Statist. Rev. 48, 317-355). In such a case, the sample mean is a biased estimator of the population mean. For this reason, we use the unbiased Horvitz-Thompson estimator (1951). In this work, we focus our interest on the variance of this estimator. The variance is cumbersome to compute because it requires the calculation of a large number of second-order inclusion probabilities. It would be helpful to use an approximation that does not need heavy calculations. The HÃ ajek (1964) variance approximation provides this advantage as it is free of second-order inclusion probabilities. HÃ ajek (1964) proved that this approximation is valid under restrictive conditions that are usually not fulÿlled in practice. In this paper, we give more general conditions and we show that this approximation remains acceptable for most practical problems.
📜 SIMILAR VOLUMES
Estimation of the covariance matrices in the multivariate balanced one-way random effect model is discussed. The rank of the between-group covariance matrix plays a large role in model building as well as in assessing asymptotic properties of the estimated covariance matrices. The restricted (residu
The homogenetic estimate for the variance of survival rate is proposed based on generalization and reduction between the complement of the empirical distribution function and the Kaplan-Meier or Berkson-Gage estimate. It reduces to the binomial variance estimate when there is no censoring. A Monte C
In order to construct confidence sets for a marginal density f of a strictly stationary continuous time process observed over the time interval [0, T ], it is necessary to have at one's disposal a Central Limit Theorem for the kernel density estimator f T . In this paper we address the question of n