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
The t factor analysis (tFA) model is a promising tool for robust reduction of high-dimensional data...
Missing data are an important practical problem in many applications of statistics, including social...
A factor analysis typically involves a large collection of data, and it is common for some of the da...
This article introduces a robust extension of the mixture of factor analysis models based on the res...
Factor analysis is a classical data reduction technique that seeks a poten-tially lower number of un...
Factor analysis is a classical data-reduction technique that seeks a potentially lower number of uno...
AbstractWe establish computationally flexible methods and algorithms for the analysis of multivariat...
The authors study the estimation of factor models and the imputation of missing data and propose an ...
In this paper an algorithm called SEM, which is a stochastic version of the EM algorithm, is used to...
This paper concerns estimating parameters in a high-dimensional dynamic factor model by the method o...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
This research explores factor analysis applied to data from skewed distributions for the general sk...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
The model-based approach to inference from multivariate data with missing values is reviewed. Regres...
The t factor analysis (tFA) model is a promising tool for robust reduction of high-dimensional data...
Missing data are an important practical problem in many applications of statistics, including social...
A factor analysis typically involves a large collection of data, and it is common for some of the da...
This article introduces a robust extension of the mixture of factor analysis models based on the res...
Factor analysis is a classical data reduction technique that seeks a poten-tially lower number of un...
Factor analysis is a classical data-reduction technique that seeks a potentially lower number of uno...
AbstractWe establish computationally flexible methods and algorithms for the analysis of multivariat...
The authors study the estimation of factor models and the imputation of missing data and propose an ...
In this paper an algorithm called SEM, which is a stochastic version of the EM algorithm, is used to...
This paper concerns estimating parameters in a high-dimensional dynamic factor model by the method o...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
This research explores factor analysis applied to data from skewed distributions for the general sk...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
The model-based approach to inference from multivariate data with missing values is reviewed. Regres...
The t factor analysis (tFA) model is a promising tool for robust reduction of high-dimensional data...
Missing data are an important practical problem in many applications of statistics, including social...
A factor analysis typically involves a large collection of data, and it is common for some of the da...