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复杂调查下的无条件方差估计

Unconditional Variance Estimation Under Complex Surveys

International Statistical Review · 2025
被引 0
ABS 3

中文导读

提出一种适用于复杂调查设计的无条件方差估计方法,无需有限总体校正和联合包含概率,适用于均值、比率、分位数等参数,并可用于假设检验。

Abstract

Summary The unconditional framework treats the samples and the variables of interest as random variables. This is particularly suitable with analytic inference, when modelling survey data. We show that variance estimation does not involve finite population corrections and joint‐inclusion probabilities, even with large sampling fractions and under sampling without‐replacement. The main advantage of the variance estimator is its simplicity. We show that it is asymptotically unbiased, under unequal probability designs incorporating stratification, multistage and informative sampling. We consider a general class of parameters defined by estimating equations, such as means, ratios, quantiles and parameters of generalised linear models. We also show how auxiliary information can be incorporated. A test statistic is derived for hypotheses on parameters. We propose a consistent variance estimator under ordered systematic sampling.

调查抽样方差估计统计推断