glca: An R Package for Multiple-Group Latent Class Analysis.

IF 1 4区 心理学 Q4 PSYCHOLOGY, MATHEMATICAL Applied Psychological Measurement Pub Date : 2022-07-01 Epub Date: 2022-05-11 DOI:10.1177/01466216221084197
Youngsun Kim, Saebom Jeon, Chi Chang, Hwan Chung
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Abstract

Group similarities and differences may manifest themselves in a variety of ways in multiple-group latent class analysis (LCA). Sometimes, measurement models are identical across groups in LCA. In other situations, the measurement models may differ, suggesting that the latent structure itself is different between groups. Tests of measurement invariance shed light on this distinction. We created an R package glca that implements procedures for exploring differences in latent class structure between populations, taking multilevel data structure into account. The glca package deals with the fixed-effect LCA and the nonparametric random-effect LCA; the former can be applied in the situation where populations are segmented by the observed group variable itself, whereas the latter can be used when there are too many levels in the group variable to make a meaningful group comparisons by identifying a group-level latent variable. The glca package consists of functions for statistical test procedures for exploring group differences in various LCA models considering multilevel data structure.

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glca:用于多组潜类分析的 R 软件包。
在多组潜类分析(LCA)中,组别的相似性和差异性可能会以各种方式表现出来。有时,在 LCA 中各组的测量模型是相同的。在其他情况下,测量模型可能不同,这表明不同组之间的潜在结构本身是不同的。测量不变性测试揭示了这一区别。我们创建了一个 R 软件包 glca,该软件包在考虑多层次数据结构的基础上,实现了探索人群间潜类结构差异的程序。glca 软件包可处理固定效应 LCA 和非参数随机效应 LCA;前者可用于由观察到的群体变量本身对人群进行划分的情况,而后者可用于群体变量层次过多,无法通过识别群体水平潜变量进行有意义的群体比较的情况。glca 软件包包含一些函数,用于在考虑多层次数据结构的各种生命周期分析模型中探索群体差异的统计检验程序。
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来源期刊
CiteScore
2.30
自引率
8.30%
发文量
50
期刊介绍: Applied Psychological Measurement publishes empirical research on the application of techniques of psychological measurement to substantive problems in all areas of psychology and related disciplines.
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