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使用 EM 算法进行有限混合和用于 MIRT 校准的改进补充 EM。

Using EM Algorithm for Finite Mixtures and Reformed Supplemented EM for MIRT Calibration.

机构信息

Collaborative Innovation Center of Assessment toward Basic Education Quality, Beijing Normal University, No. 19, Xin Jie Kou Wai Street, Hai Dian District, Beijing, 100875, China.

College of Education, University of Washington, Seattle, WA, USA.

出版信息

Psychometrika. 2021 Mar;86(1):299-326. doi: 10.1007/s11336-021-09745-6. Epub 2021 Feb 16.

Abstract

This study revisits the parameter estimation issues in multidimensional item response theory more thoroughly and investigates some computation details that have seldom been addressed previously when implementing the expectation-maximization (EM) algorithm for finite mixtures (EM-FM). Two research questions are: Should we rescale after each EM cycle or after the final EM cycle? How to adapt the supplemented EM algorithm to the EM-FM framework to estimate standard errors (SEs) of all unknown parameters? Analytic details of the methods are provided, and a comprehensive simulation study is conducted to provide supporting evidence. Results reveal that rescaling after each EM cycle accelerates convergence without affecting the calibration accuracy. Moreover, the SEs of all model parameters, including item parameters and population mixing proportions, recover well when the sample size is relatively large (e.g., 2000).

摘要

本研究更深入地探讨了多维项目反应理论中的参数估计问题,并研究了在实现有限混合期望最大化(EM)算法(EM-FM)时很少涉及的一些计算细节。两个研究问题是:我们应该在每个 EM 循环后还是在最后一个 EM 循环后重新缩放?如何将补充 EM 算法适应 EM-FM 框架来估计所有未知参数的标准误差(SE)?提供了方法的分析细节,并进行了全面的模拟研究以提供支持证据。结果表明,在每个 EM 循环后重新缩放可以加速收敛,而不会影响校准精度。此外,当样本量较大(例如 2000)时,所有模型参数(包括项目参数和群体混合比例)的 SE 都能很好地恢复。

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