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Self-normalized score-based tests to detect parameter heterogeneity for mixed models

Methodology 2023-06-13 v2

Abstract

Score-based tests have been used to study parameter heterogeneity across many types of statistical models. This chapter describes a new self-normalization approach for score-based tests of mixed models, which addresses situations where there is dependence between scores. This differs from the traditional score-based tests, which require independence of scores. We first review traditional score-based tests and then propose a new, self-normalized statistic that is related to previous work by Shao and Zhang (2010) and Zhang, Shao, Hayhoe, and Wuebbles (2011). We then provide simulation studies that demonstrate how traditional score-based tests can fail when scores are dependent, and that also demonstrate the good performance of the self-normalized tests. Next, we illustrate how the statistics can be used with real data. Finally, we discuss the potential broad application of self-normalized, score-based tests in mixed models and other models with dependent observations.

Keywords

Cite

@article{arxiv.2302.14275,
  title  = {Self-normalized score-based tests to detect parameter heterogeneity for mixed models},
  author = {Ting Wang and Edgar Merkle},
  journal= {arXiv preprint arXiv:2302.14275},
  year   = {2023}
}
R2 v1 2026-06-28T08:51:22.466Z