Robust skew-t factor analysis models for handling missing data

被引:0
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作者
Wan-Lun Wang
Min Liu
Tsung-I Lin
机构
[1] Feng Chia University,Department of Statistics, Graduate Institute of Statistics and Actuarial Science
[2] University of Hawaii at Mānoa,Department of Educational Psychology
[3] National Chung Hsing University,Institute of Statistics
[4] China Medical University,Department of Public Health
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关键词
Asymmetry; ECM algorithm; Imputation; Incomplete data; rMST distribution; STFA model; 62H12; 62H25;
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摘要
This paper presents a novel framework for maximum likelihood (ML) estimation in skew-t factor analysis (STFA) models in the presence of missing values or nonresponses. As a robust extension of the ordinary factor analysis model, the STFA model assumes a restricted version of the multivariate skew-t distribution for the latent factors and the unobservable errors to accommodate non-normal features such as asymmetry and heavy tails or outliers. An EM-type algorithm is developed to carry out ML estimation and imputation of missing values under a missing at random mechanism. The practical utility of the proposed methodology is illustrated through real and synthetic data examples.
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页码:649 / 672
页数:23
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