Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/113035
題名: The Impact of Ignoring the Level of Nesting Structure in Nonparametric Multilevel Latent Class Models
作者: 游琇婷
Park, Jungkyu
Yu, Hsiu Ting
貢獻者: 心理系
日期: Oct-2016
上傳時間: 15-Sep-2017
摘要: The multilevel latent class model (MLCM) is a multilevel extension of a latent class model (LCM) that is used to analyze nested structure data structure. The nonparametric version of an MLCM assumes a discrete latent variable at a higher-level nesting structure to account for the dependency among observations nested within a higher-level unit. In the present study, a simulation study was conducted to investigate the impact of ignoring the higher-level nesting structure. Three criteria—the model selection accuracy, the classification quality, and the parameter estimation accuracy—were used to evaluate the impact of ignoring the nested data structure. The results of the simulation study showed that ignoring higher-level nesting structure in an MLCM resulted in the poor performance of the Bayesian information criterion to recover the true latent structure, the inaccurate classification of individuals into latent classes, and the inflation of standard errors for parameter estimates, while the parameter estimates were not biased. This article concludes with remarks on ignoring the nested structure in nonparametric MLCMs, as well as recommendations for applied researchers when LCM is used for data collected from a multilevel nested structure.
關聯: Educational and Psychological Measurement, 76(5), 824-847
資料類型: article
DOI: http://dx.doi.org/10.1177/0013164415618240
Appears in Collections:期刊論文

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