潜在类聚类分析

A. Ünlü
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引用次数: 8

摘要

本文介绍了探索性潜在类聚类分析技术。经典分析是一种基于模型的统计方法,用于从观察到的分类数据中识别未观察到的子组,并根据统计模型直接估计的隶属概率将病例分类到已识别的子组中。在本文数学建模的第一部分,我们介绍了潜在类分析所需的数据和数据的抽样分布,回顾了模型的基本假设,并提出了一般的不受限制的潜在类模型。讨论了用模态赋值对案例进行分类。在本文的推理统计的第二部分,我们简要回顾了经典的极大似然方法与参数估计和模型检验有关,以及用于模型选择的信息准则AIC和SIC。在本文的第三部分案例研究中,使用Latent GOLD®软件对综合社会调查数据进行分析。我们提供了Latent GOLD®剖面图和三图选项,用于结果的图形表示。还显示了Latent GOLD®分类输出,说明了受访者对潜在调查受访者类型的分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Latent class cluster analysis
This paper describes the technique of exploratory latent class cluster analysis. The classical analysis is a model-based statistical approach for identifying unobserved subgroups from observed categorical data and for classifying cases into the identified subgroups based on membership probabilities estimated directly from the statistical model. In the first part on mathematical modeling of the paper, we introduce the data and the sampling distribution for the data as required in the analysis of latent classes, the fundamental model assumptions are reviewed, and the general unrestricted latent class model is presented. Classification of cases into the clusters using modal assignment is discussed. In the second part on inferential statistics of the paper, we briefly review the classical maximum likelihood methodology related to parameter estimation and model testing, and the information criteria AIC and SIC for model selection. In the third part on case study of the paper, the General Social Survey data are analyzed using the software Latent GOLD®. We present the Latent GOLD® profile plot and tri plot options for the graphical representation of the results. The Latent GOLD® classification output illustrating the assignment of respondents to the latent survey respondent types is also shown.
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