论文标题
因子分析仪的不对称混合物的贝叶斯框架
A Bayesian Framework on Asymmetric Mixture of Factor Analyser
论文作者
论文摘要
因子分析仪(MFA)模型的混合物是用于分析高维数据的有效模型,基于因子 - 分析仪技术基于协方差矩阵减少了自由参数的数量。该模型还提供了一种重要的方法来确定数据中的潜在组。有几项研究可以根据不对称和/或具有异常数据集扩展模型,并在常见主义者情况下已经检查了一些已知的计算局限性。在本文中,已经引入了具有丰富而灵活的偏斜(无限制)广义双曲线(称为SunGH)的MFA模型以及具有几种计算益处的贝叶斯结构。 Sungh家族提供了相当大的灵活性,可以在不同方向上建模偏度,并允许重尾数据。 SunGh家族的结构中有几种理想的特性,包括分析性柔性密度,可简化用于估计参数的计算。考虑因素分析模型,SunGH家族还可以为误差成分和因子得分偏斜和较重的尾巴。在本研究中,已经讨论了使用该分布族的优势,并证明了使用实际数据示例引入的MFA模型的合适效率和模拟。
Mixture of factor analyzer (MFA) model is an efficient model for the analysis of high dimensional data through which the factor-analyzer technique based on the covariance matrices reducing the number of free parameters. The model also provides an important methodology to determine latent groups in data. There are several pieces of research to extend the model based on the asymmetrical and/or with outlier datasets with some known computational limitations that have been examined in frequentist cases. In this paper, an MFA model with a rich and flexible class of skew normal (unrestricted) generalized hyperbolic (called SUNGH) distributions along with a Bayesian structure with several computational benefits have been introduced. The SUNGH family provides considerable flexibility to model skewness in different directions as well as allowing for heavy tailed data. There are several desirable properties in the structure of the SUNGH family, including, an analytically flexible density which leads to easing up the computation applied for the estimation of parameters. Considering factor analysis models, the SUNGH family also allows for skewness and heavy tails for both the error component and factor scores. In the present study, the advantages of using this family of distributions have been discussed and the suitable efficiency of the introduced MFA model using real data examples and simulation has been demonstrated.