Marginalized maximum a posteriori estimation for the four-parameter logistic model under a mixture modelling framework |
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Authors: | Xiangbin Meng Gongjun Xu Jiwei Zhang Jian Tao |
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Affiliation: | 1. School of Mathematics and Statistics, KLAS, Northeast Normal University, Changchun, Jilin, China;2. Department of Statistics, University of Michigan, Ann Arbor, Michigan, USA;3. Key Lab of Statistical Modeling and Data Analysis of Yunnan Province, School of Mathematics and Statistics, Yunnan University, Kunming, Yunnan, China |
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Abstract: | The four-parameter logistic model (4PLM) has recently attracted much interest in various applications. Motivated by recent studies that re-express the four-parameter model as a mixture model with two levels of latent variables, this paper develops a new expectation–maximization (EM) algorithm for marginalized maximum a posteriori estimation of the 4PLM parameters. The mixture modelling framework of the 4PLM not only makes the proposed EM algorithm easier to implement in practice, but also provides a natural connection with popular cognitive diagnosis models. Simulation studies were conducted to show the good performance of the proposed estimation method and to investigate the impact of the additional upper asymptote parameter on the estimation of other parameters. Moreover, a real data set was analysed using the 4PLM to show its improved performance over the three-parameter logistic model. |
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Keywords: | expectation–maximization algorithm four-parameter logistic model marginalized maximum a posteriori estimation mixture model |
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