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      Simple bootstrap for linear mixed effects under model misspecification

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          Abstract

          Linear mixed effects are considered excellent predictors of cluster-level parameters in various domains. However, previous work has shown that their performance can be seriously affected by departures from modelling assumptions. Since the latter are common in applied studies, there is a need for inferential methods which are to certain extent robust to misspecfications, but at the same time simple enough to be appealing for practitioners. We construct statistical tools for cluster-wise and simultaneous inference for mixed effects under model misspecification using straightforward semiparametric random effect bootstrap. In our theoretical analysis, we show that our methods are asymptotically consistent under general regularity conditions. In simulations our intervals were robust to severe departures from model assumptions and performed better than their competitors in terms of empirical coverage probability.

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          Author and article information

          Journal
          25 July 2022
          Article
          2207.12455
          80de911e-b0ce-46e7-ac5e-9fd2c3b269af

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          62F03, 62F40, 62J05, 62J15
          23 pages, 12 tables
          stat.ME stat.CO

          Methodology,Mathematical modeling & Computation
          Methodology, Mathematical modeling & Computation

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