Mixture of shifted binomial distributions for rating data

IF 0.8 4区 数学 Q3 STATISTICS & PROBABILITY Annals of the Institute of Statistical Mathematics Pub Date : 2023-02-10 DOI:10.1007/s10463-023-00865-7
Shaoting Li, Jiahua Chen
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Abstract

Rating data are a kind of ordinal categorical data routinely collected in survey sampling. The response value in such applications is confined to a finite number of ordered categories. Due to population heterogeneity, the respondents may have several different rating styles. A finite mixture model is thus most suitable to fit datasets of this nature. In this paper, we propose a two-component mixture of shifted binomial distributions for rating data. We show that this model is identifiable and propose a numerically stable penalized likelihood approach for parameter estimation. We adapt an expectation-maximization algorithm for the penalized maximum likelihood estimation. Our simulation results show that the penalized maximum likelihood estimator is consistent and effective. We fit the proposed model and other models in the literature to some real-world datasets and find the proposed model can have much better fits.

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混合移位二项分布的评级数据
评级数据是在调查抽样中常规收集的一种有序分类数据。在这种应用中,响应值被限制在有限数量的有序类别中。由于人口异质性,受访者可能有几种不同的评级风格。因此,有限混合模型最适合拟合这种性质的数据集。在本文中,我们提出了一个双分量混合移位二项分布的评级数据。我们证明了该模型是可识别的,并提出了一种数值稳定的惩罚似然方法用于参数估计。我们采用了一种期望最大化算法来进行惩罚极大似然估计。仿真结果表明,惩罚极大似然估计是一致的、有效的。我们将提出的模型和文献中的其他模型拟合到一些现实世界的数据集,发现提出的模型可以有更好的拟合。
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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: Annals of the Institute of Statistical Mathematics (AISM) aims to provide a forum for open communication among statisticians, and to contribute to the advancement of statistics as a science to enable humans to handle information in order to cope with uncertainties. It publishes high-quality papers that shed new light on the theoretical, computational and/or methodological aspects of statistical science. Emphasis is placed on (a) development of new methodologies motivated by real data, (b) development of unifying theories, and (c) analysis and improvement of existing methodologies and theories.
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