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Fitting and Testing Conditional Multinormal Partial Credit Models

机译:拟合和测试条件多标准局部信用模型

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摘要

A multinormal partial credit model for factor analysis of polytomously scored items with ordered response categories is derived using an extension of the Dutch Identity (Holland in Psychometrika 55:5-18, 1990). In the model, latent variables are assumed to have a multivariate normal distribution conditional on unweighted sums of item scores, which are sufficient statistics. Attention is paid to maximum likelihood estimation of item parameters, multivariate moments of latent variables, and person parameters. It is shown that the maximum likelihood estimates can be found without the use of numerical integration techniques. More general models are discussed which can be used for testing the model, and it is shown how models with different numbers of latent variables can be tested against each other. In addition, multi-group extensions are proposed, which can be used for testing both measurement invariance and latent population differences. Models and procedures discussed are demonstrated in an empirical data example.
机译:使用荷兰身份的扩展名(Holland in Psychometrika 55:5-18,1990)得出了一个多正常的部分信用模型,该模型用于对具有排序的响应类别的多份评分项目进行因子分析。在模型中,假设潜在变量具有以项目评分的未加权总和为条件的多元正态分布,这是足够的统计数据。注意项目参数,潜在变量的多元矩和人员参数的最大似然估计。结果表明,无需使用数值积分技术就可以找到最大似然估计。讨论了可用于测试模型的更通用的模型,并显示了如何对具有不同潜在变量数量的模型进行相互测试。此外,提出了多组扩展,可用于测试测量不变性和潜在总体差异。在经验数据示例中演示了所讨论的模型和过程。

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