EcoSta 2022: Start Registration
View Submission - EcoSta2022
A0280
Title: Mixtures of unrestricted skew normal factor analyzers with incomplete data Authors:  Tsung-I Lin - National Chung Hsing University (Taiwan) [presenting]
Abstract: Mixtures of factor analyzers (MFA) based on the restricted skew-normal distribution (rMSN) have been shown to be a flexible tool to handle asymmetrical high-dimensional data with heterogeneity. However, the rMSN distribution is oft-criticized a lack of sufficient ability to accommodate potential skewness arising from more than one feature space. An alternative extension of MFA is presented by assuming the unrestricted skew-normal (uMSN) distribution for the component factors. In particular, the proposed mixtures of unrestricted skew-normal factor analyzers (MuSNFA) can simultaneously capture multiple directions of skewness and deal with the occurrence of missing values or nonresponses. Under the missing at random (MAR) mechanism, we develop a computationally feasible expectation conditional maximization (ECM) algorithm for computing the maximum likelihood estimates of model parameters. Practical aspects related to model-based clustering, prediction of factor scores and missing values are also discussed. The utility of the proposed methodology is illustrated with the analysis of simulated data and the Pima Indian women's diabetes data containing genuine missing values.