We establish computationally flexible tools for the analysis of multivariate skew normal mixtures when missing values occur in data. To facilitate the computation and simplify the theoretical derivation, two auxiliary permutation matrices are incorporated into the model for the determination of observed and missing components of each observation and are manifestly effective in reducing the computational complexity. We present an analytically feasible EM algorithm for the supervised learning of parameters as well as missing observations. The proposed mixture analyzer, including the most commonly used Gaussian mixtures as a special case, allows practitioners to handle incomplete multivariate data sets in a wide range of considerations. The me...
Finite mixtures of skew distributions provide a flexible tool for modeling heterogeneous data with a...
AbstractIt is well known that the maximum likelihood estimates (MLEs) of a multivariate normal distr...
Finite mixtures of multivariate skew distributions have become increasingly popular in recent years ...
AbstractWe establish computationally flexible methods and algorithms for the analysis of multivariat...
Abstract—In data-mining applications, we are frequently faced with a large fraction of missing entri...
This article introduces a robust extension of the mixture of factor analysis models based on the res...
In this paper, pattern classification by stochastic neural networks is considered. This model is als...
The mixture of factor analyzers (MFA) model, by reducing the number of free parameters through its f...
AbstractThis paper provides a flexible mixture modeling framework using the multivariate skew normal...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...
We propose an extension of the EM algorithm and its stochastic versions for the construction of inco...
We present an algorithm for multivariate robust Bayesian linear regression with missing data. The it...
It is natural to assume that a missing-data mechanism depends on latent variables in the analysis of...
In this paper an algorithm called SEM, which is a stochastic version of the EM algorithm, is used to...
Finite mixtures of skew distributions provide a flexible tool for modeling heterogeneous data with a...
AbstractIt is well known that the maximum likelihood estimates (MLEs) of a multivariate normal distr...
Finite mixtures of multivariate skew distributions have become increasingly popular in recent years ...
AbstractWe establish computationally flexible methods and algorithms for the analysis of multivariat...
Abstract—In data-mining applications, we are frequently faced with a large fraction of missing entri...
This article introduces a robust extension of the mixture of factor analysis models based on the res...
In this paper, pattern classification by stochastic neural networks is considered. This model is als...
The mixture of factor analyzers (MFA) model, by reducing the number of free parameters through its f...
AbstractThis paper provides a flexible mixture modeling framework using the multivariate skew normal...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...
We propose an extension of the EM algorithm and its stochastic versions for the construction of inco...
We present an algorithm for multivariate robust Bayesian linear regression with missing data. The it...
It is natural to assume that a missing-data mechanism depends on latent variables in the analysis of...
In this paper an algorithm called SEM, which is a stochastic version of the EM algorithm, is used to...
Finite mixtures of skew distributions provide a flexible tool for modeling heterogeneous data with a...
AbstractIt is well known that the maximum likelihood estimates (MLEs) of a multivariate normal distr...
Finite mixtures of multivariate skew distributions have become increasingly popular in recent years ...