Dados Bibliográficos

AUTOR(ES) P. Clarke , B. Wheaton
AFILIAÇÃO(ÕES) University of Michigan, Ann Arbor, University of Toronto Faculty of Medicine
ANO 2007
TIPO Artigo
PERIÓDICO Sociological Methods and Research
ISSN 0049-1241
E-ISSN 1552-8294
EDITORA Annual Reviews (United States)
DOI 10.1177/0049124106292362
CITAÇÕES 7
ADICIONADO EM 2025-08-18
MD5 1ea99e17a7ae37a29a543b52016fc21c

Resumo

The use of multilevel modeling with data from population-based surveys is often limited by the small number of cases per Level 2 unit, prompting a recent trend in the neighborhood literature to apply cluster techniques to address the problem of data sparseness. In this study, the authors use Monte Carlo simulations to investigate the effects of marginal group sizes on multilevel model performance, bias, and efficiency. They then employ cluster analysis techniques to minimize data sparseness and examine the consequences in the simulations. They find that estimates of the fixed effects are robust at the extremes of data sparseness, while cluster analysis is an effective strategy to increase group size and prevent the overestimation of variance components. However, researchers should be cautious about the degree to which they use such clustering techniques due to the introduction of artificial within-group heterogeneity.

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