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Models with discrete latent variables for analysis of categorical data: A framework and a MATLAB MDLV toolbox

机译:具有离散潜变量的模型用于分类数据分析:框架和MATLAB MDLV工具箱

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摘要

Studies in the social and behavioral sciences often involve categorical data, such as ratings, and define latent constructs underlying the research issues as being discrete. In this article, models with discrete latent variables (MDLV) for the analysis of categorical data are grouped into four families, defined in terms of two dimensions (time and sampling) of the data structure. A MATLAB toolbox (referred to as the “MDLV toolbox”) was developed for applying these models in practical studies. For each family of models, model representations and the statistical assumptions underlying the models are discussed. The functions of the toolbox are demonstrated by fitting these models to empirical data from the European Values Study. The purpose of this article is to offer a framework of discrete latent variable models for data analysis, and to develop the MDLV toolbox for use in estimating each model under this framework. With this accessible tool, the application of data modeling with discrete latent variables becomes feasible for a broad range of empirical studies.
机译:社会科学和行为科学的研究通常涉及分类数据,例如评级,并将潜在的潜在研究问题定义为离散的。在本文中,用于分析类别数据的具有离散潜变量(MDLV)的模型分为四个族,分别根据数据结构的二维(时间和采样)定义。开发了MATLAB工具箱(称为“ MDLV工具箱”)以将这些模型应用到实际研究中。对于每个模型系列,都讨论了模型表示形式和模型基础的统计假设。通过将这些模型与来自欧洲价值观研究的经验数据进行拟合,可以展示工具箱的功能。本文的目的是提供用于数据分析的离散潜变量模型的框架,并开发MDLV工具箱以用于在此框架下估计每个模型。使用这种可访问的工具,具有离散潜变量的数据建模的应用对于广泛的经验研究变得可行。

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