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An introduction to latent variable mixture modeling (Part 1): Overview and cross-sectional latent class and latent profile analyses

机译:潜在变量混合模型简介(第1部分):概述和横截面潜在类别以及潜在剖面分析

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摘要

Objective Pediatric psychologists are often interested in finding patterns in heterogeneous cross-sectional data. Latent variable mixture modeling is an emerging person-centered statistical approach that models heterogeneity by classifying individuals into unobserved groupings (latent classes) with similar (more homogenous) patterns. The purpose of this article is to offer a nontechnical introduction to cross-sectional mixture modeling. Method An overview of latent variable mixture modeling is provided and 2 cross-sectional examples are reviewed and distinguished. Results Step-by-step pediatric psychology examples of latent class and latent profile analyses are provided using the Early Childhood Longitudinal Study-Kindergarten Class of 1998-1999 data file. Conclusions Latent variable mixture modeling is a technique that is useful to pediatric psychologists who wish to find groupings of individuals who share similar data patterns to determine the extent to which these patterns may relate to variables of interest.
机译:客观儿科心理学家通常对在异类横截面数据中寻找模式感兴趣。潜变量混合建模是一种新兴的以人为中心的统计方法,该方法通过将个体分为具有相似(更均质)模式的未观察到的分组(潜类)来建模异质性。本文的目的是为横截面混合物建模提供非技术性的介绍。方法提供了潜在变量混合模型的概述,并回顾和区分了2个横截面示例。结果使用1998-1999早期儿童纵向研究-幼儿园班级数据文件,提供了有关潜伏类和潜伏性格分析的分步儿科心理学实例。结论潜在变量混合建模是一种对希望找到共享相似数据模式的个体分组以确定这些模式与感兴趣变量相关程度的儿童心理学家有用的技术。

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