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Comparing Fits of Latent Trait and Latent Class Models Applied to Sparse Binary Data: An Illustration with Human Resource Management Data

机译:比较适用于稀疏二进制数据的潜在特征和潜在类模型的拟合度:与人力资源管理数据的说明

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摘要

This paper addresses the problem of comparing the fit of latent class and latent trait models when the indicators are binary and the contingency table is sparse. This problem is common in the analysis of data from large surveys, where many items are associated with an unobservable variable. A study of human resource data illustrates: (1) how the usual goodness-of-fit tests, model selection and cross-validation criteria can be inconclusive; (2) how model selection and evaluation procedures from time series and economic forecasting can be applied to extend residual analysis in this context.
机译:本文针对指标为二元且列联表稀疏的情况下,比较潜在类和潜在特征模型的拟合度的问题。这个问题在大型调查的数据分析中很常见,其中许多项目与一个不可观察的变量相关联。对人力资源数据的研究表明:(1)通常的拟合优度测试,模型选择和交叉验证标准是如何得出结论的; (2)在这种情况下如何应用来自时间序列和经济预测的模型选择和评估程序来扩展残差分析。

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