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On the Identifiability of Diagnostic Classification Models

机译:关于诊断分类模型的可识别性

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摘要

This paper establishes fundamental results for statistical analysis based on diagnostic classification models (DCMs). The results are developed at a high level of generality and are applicable to essentially all diagnostic classification models. In particular, we establish identifiability results for various modeling parameters, notably item response probabilities, attribute distribution, and Q-matrix-induced partial information structure. These results are stated under a general setting of latent class models. Through a nonparametric Bayes approach, we construct an estimator that can be shown to be consistent when the identifiability conditions are satisfied. Simulation results show that these estimators perform well under various model settings. We also apply the proposed method to a dataset from the National Epidemiological Survey on Alcohol and Related Conditions (NESARC).
机译:本文建立了基于诊断分类模型(DCMS)的统计分析的基本结果。 结果以高级别的一般性开发,并且适用于基本上所有诊断分类模型。 特别地,我们为各种建模参数,特别是项目响应概率,属性分布和Q矩阵诱导的部分信息结构建立可识别性结果。 这些结果在潜在级模型的一般设置下说明。 通过非参数贝叶斯方法,我们构建一个估计器,当满足可识别性条件时,可以证明可以保持一致。 仿真结果表明,这些估算器在各种模型设置下表现良好。 我们还将建议的方法应用于国家流行病学调查的数据集(NESARC)。

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