We propose a new procedure for sparse factor analysis (FA) such that each variable loads only one common factor. Thus, the loading matrix has a single nonzero element in each row and zeros elsewhere. Such a loading matrix is the sparsest possible for certain number of variables and common factors. For this reason, the proposed method is named sparsest FA (SSFA). It may also be called FA-based variable clustering, since the variables loading the same common factor can be classified into a cluster. In SSFA, all model parts of FA (common factors, their correlations, loadings, unique factors, and unique variances) are treated as fixed unknown parameter matrices and their least squares function is minimized through specific data matrix decomposi...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
Motivated by the constrained factorization problems of sparse principal components analysis (PCA) fo...
In this article, we propose a new framework for matrix factorization based on principal component an...
Sparse principal component analysis is a very active research area in the last decade. In the same t...
Sparse principal component analysis is a very active research area in the last decade. It produces c...
It is well-known that the classical exploratory factor analysis (EFA) of data with more observations...
A new factor analysis (FA) procedure has recently been proposed which can be called matrix decomposi...
In this article, we propose a new framework for matrix factorization based on principal component an...
The factor analysis (FA) model does not permit unique estimation of the common and unique factor sco...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
A new approach for exploratory factor analysis (EFA) of data matrices with more variables p than obs...
The main objective of this thesis is to propose new techniques to simplify the interpretation of new...
The classical fitting problem in exploratory factor analysis (EFA) is to find estimates for the fact...
A new approach for exploratory factor analysis (EFA) of data matrices with more variables p than obs...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
Motivated by the constrained factorization problems of sparse principal components analysis (PCA) fo...
In this article, we propose a new framework for matrix factorization based on principal component an...
Sparse principal component analysis is a very active research area in the last decade. In the same t...
Sparse principal component analysis is a very active research area in the last decade. It produces c...
It is well-known that the classical exploratory factor analysis (EFA) of data with more observations...
A new factor analysis (FA) procedure has recently been proposed which can be called matrix decomposi...
In this article, we propose a new framework for matrix factorization based on principal component an...
The factor analysis (FA) model does not permit unique estimation of the common and unique factor sco...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
A new approach for exploratory factor analysis (EFA) of data matrices with more variables p than obs...
The main objective of this thesis is to propose new techniques to simplify the interpretation of new...
The classical fitting problem in exploratory factor analysis (EFA) is to find estimates for the fact...
A new approach for exploratory factor analysis (EFA) of data matrices with more variables p than obs...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
Motivated by the constrained factorization problems of sparse principal components analysis (PCA) fo...
In this article, we propose a new framework for matrix factorization based on principal component an...