Fitting H. F. Smith's Empirical Law to Cluster Variances for Use in Designing Multi-Stage Sample Surveys
研究了如何利用多阶段抽样调查数据估计H. Fairfield Smith的异质性系数b,该系数用于优化多阶段样本设计中的集群大小和子抽样率,对调查设计者有用。
Abstract A number of methods are examined for using data from a multistage sample survey to estimate H. Fairfield Smith's heterogeneity coefficient, b. Smith's empirical law holds that cluster variances are proportional to the — b power of cluster size. The most reasonable method for estimating b seems to be generalized least squares applied to the linear model obtained by taking logs and then adding a lack-of-fit variance. The methods allow for simple measurement errors and systematic fixed effects, all in a finite population context. There is, however, a supposition of nearly equal or balanced sizes of the nested units. The b value so estimated can be used to derive optimum elementary cluster size and optimum subsampling rates for the multi-stage sample design. These applications are illustrated by numerical examples.