Multivariate Small-area Estimation for Mixed-type Response Variables With Item Nonresponse

Author:

Sun Hao1ORCID,Berg Emily2,Zhu Zhengyuan3

Affiliation:

1. Biostatistician at Bristol Myers Squibb , Summit, NJ 07901, USA

2. Iowa State University Associate Professor Department of Statistics, , Ames, IA, USA

3. Iowa State University Professor in the Department of Statistics, , Ames, IA, USA

Abstract

Abstract Many surveys collect information on discrete characteristics and continuous variables, that is, mixed-type variables. Small-area statistics of interest include means or proportions of the response variables as well as their domain means, which are the mean values at each level of a different categorical variable. However, item nonresponse in survey data increases the complexity of small-area estimation. To address this issue, we propose a multivariate mixed-effects model for mixed-type response variables subject to item nonresponse. We apply this method to two data structures where the data are missing completely at random by design. We use empirical data from two separate studies: a survey of pet owners and a dataset from the National Resources Inventory. In these applications, our proposed method leads to improvements relative to a direct estimator and a predictor based on a univariate model.

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Statistics, Probability and Uncertainty,Social Sciences (miscellaneous),Statistics and Probability

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