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Testing Inference from Logistic Regression Models in Data with Unobserved Heterogeneity at Cluster Levels
Authors:Salma Ayis
Institution:1. Department of Social Medicine , University of Bristol , Bristol , United Kingdom s.ayis@bristol.ac.uk
Abstract:Clustering due to unobserved heterogeneity may seriously impact on inference from binary regression models. We examined the performance of the logistic, and the logistic-normal models for data with such clustering. The total variance of unobserved heterogeneity rather than the level of clustering determines the size of bias of the maximum likelihood (ML) estimator, for the logistic model. Incorrect specification of clustering as level 2, using the logistic-normal model, provides biased estimates of the structural and random parameters, while specifying level 1, provides unbiased estimates for the former, and adequately estimates the latter. The proposed procedure appeals to many research areas.
Keywords:Biased estimates  Casual inference  Cluster  Logistic model  Logistic-Normal model  Unobserved heterogeneity
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