Abstract—Factor analysis provides linear factors that describe relation-ships between individual variables of a data set. We extend this clas-sical formulation into linear factors that describe relationships between groups of variables, where each group represents either a set of related variables or a data set. The model also naturally extends canonical cor-relation analysis to more than two sets, in a way that is more flexible than previous extensions. Our solution is formulated as variational inference of a latent variable model with structural sparsity, and it consists of two hierarchical levels: The higher level models the relationships between the groups, whereas the lower models the observed variables given the higher level. We show ...
In this paper we present a grouped factor model that is designed to explore clustering structures in...
Hierarchical models are often considered to measure latent concepts defining nested sets of manifest...
Factor analysis is a multivariate statistical method for data reduction that originated in psychomet...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
We introduce a factor analysis model that summarizes the dependencies between ob-served variable gro...
We introduce a factor analysis model that summarizes the dependencies between observed variable grou...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
Latent class (LC) analysis is becoming one of the standard data analysis tools in social, biomedical...
Abstract. The machine learning community has recently devoted much attention to the problem of infer...
We introduce a generalization of the approximate factor model for which the observable variables bel...
ABSTRACT. Despite known shortcomings of the procedure, exploratory factor analysis of dichotomous te...
this paper, we suggest the statistical technique of factor analysis as an interesting alternative to...
The confirmatory factor analysis (CFA) (see Factor Analysis: Confirmatory) model is a very effec-tiv...
In this paper, we study latent factor models with dependency structure in the la-tent space. We prop...
We introduce a generalization of the approximate factor model that divides the observable variables ...
In this paper we present a grouped factor model that is designed to explore clustering structures in...
Hierarchical models are often considered to measure latent concepts defining nested sets of manifest...
Factor analysis is a multivariate statistical method for data reduction that originated in psychomet...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
We introduce a factor analysis model that summarizes the dependencies between ob-served variable gro...
We introduce a factor analysis model that summarizes the dependencies between observed variable grou...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
Latent class (LC) analysis is becoming one of the standard data analysis tools in social, biomedical...
Abstract. The machine learning community has recently devoted much attention to the problem of infer...
We introduce a generalization of the approximate factor model for which the observable variables bel...
ABSTRACT. Despite known shortcomings of the procedure, exploratory factor analysis of dichotomous te...
this paper, we suggest the statistical technique of factor analysis as an interesting alternative to...
The confirmatory factor analysis (CFA) (see Factor Analysis: Confirmatory) model is a very effec-tiv...
In this paper, we study latent factor models with dependency structure in the la-tent space. We prop...
We introduce a generalization of the approximate factor model that divides the observable variables ...
In this paper we present a grouped factor model that is designed to explore clustering structures in...
Hierarchical models are often considered to measure latent concepts defining nested sets of manifest...
Factor analysis is a multivariate statistical method for data reduction that originated in psychomet...