Composite empirical likelihood for multisample clustered data

  • Jiahua Chen
  • , Pengfei Li
  • , Yukun Liu*
  • , James V. Zidek
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

In many applications, data cluster. Failing to take the cluster structure into consideration generally leads to underestimated variances of point estimators and inflated type I errors in hypothesis tests. Many circumstance-dependent approaches have been developed to handle clustered data. A working covariance matrix may be used in generalised estimating equations. One may throw out the cluster structure and use only the cluster means, or explicitly model the cluster structure. Our interest is the case where multiple samples of clustered data are collected, and the population quantiles are particularly important. We develop a composite empirical likelihood for clustered data under a density ratio model. This approach avoids parametric assumptions on the population distributions or the cluster structure. It efficiently utilises the common features of the multiple populations and the exchangeability of the cluster members. We also develop a cluster-based bootstrap method to provide valid variance estimation and to control the type I errors. We examine the performance of the proposed method through simulation experiments and illustrate its usage via a real-world example.

Original languageEnglish
Pages (from-to)60-81
Number of pages22
JournalJournal of Nonparametric Statistics
Volume33
Issue number1
DOIs
StatePublished - 2021

Keywords

  • Bootstrap
  • clustered data
  • composite likelihood
  • density ratio model
  • empirical likelihood
  • multiple sample
  • random effect

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