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复杂调查抽样中广义线性模型的方差估计

Variance Estimation in Complex Survey Sampling for Generalized Linear Models

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2008
被引 0
ABS 3

中文导读

针对复杂调查数据中非标准回归模型(如医疗支出数据中方差与均值的1.5次幂成正比)的方差估计问题,提出一种两步法,可在标准软件中实现一致估计。

Abstract

Summary Complex survey sampling is often used to sample a fraction of a large finite population. In general, the survey is conducted so that each unit (e.g. subject) in the sample has a different probability of being selected into the sample. For generalizability of the sample to the population, both the design and the probability of being selected into the sample must be incorporated in the analysis. In this paper we focus on non-standard regression models for complex survey data. In our motivating example, which is based on data from the Medical Expenditure Panel Survey, the outcome variable is the subject's ‘total health care expenditures in the year 2002’. Previous analyses of medical cost data suggest that the variance is approximately equal to the mean raised to the power of 1.5, which is a non-standard variance function. Currently, the regression parameters for this model cannot be easily estimated in standard statistical software packages. We propose a simple two-step method to obtain consistent regression parameter and variance estimates; the method proposed can be implemented within any standard sample survey package. The approach is applicable to complex sample surveys with any number of stages.

调查抽样方差估计广义线性模型医疗支出回归分析