Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underlying multivariate data. Rotation and regularised estimation are two classes of methods in EFA that they often use to find interpretable loading matrices. In this paper, we propose a new family of oblique rotations based on component-wise L p loss functions (0 < p≤ 1) that is closely related to an L p regularised estimator. We develop model selection and post-selection inference procedures based on the proposed rotation method. When the true loading matrix is sparse, the proposed method tends to outperform traditional rotation and regularised estimation methods in terms of statistical accuracy and computational cost. Since the proposed loss fun...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
With the usual estimation methods of factor models, the estimated factors are notoriously difficult ...
Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underly...
Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underly...
Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underly...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
Rotational transformations have traditionally played a key role in enhancing the interpretability of...
Exploratory factor analysis (EFA) is an important tool when the measurement structure of psychologic...
Component loss functions (CLFs) similar to those used in orthogonal rotation are introduced to defin...
Sparse principal component analysis is a very active research area in the last decade. It produces c...
Component loss functions (CLFs) similar to those used in orthogonal rotation are introduced to defin...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
With the usual estimation methods of factor models, the estimated factors are notoriously difficult ...
Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underly...
Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underly...
Researchers have widely used exploratory factor analysis (EFA) to learn the latent structure underly...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
The problem of penalized maximum likelihood (PML) for an exploratory factor analysis (EFA) model is ...
Rotational transformations have traditionally played a key role in enhancing the interpretability of...
Exploratory factor analysis (EFA) is an important tool when the measurement structure of psychologic...
Component loss functions (CLFs) similar to those used in orthogonal rotation are introduced to defin...
Sparse principal component analysis is a very active research area in the last decade. It produces c...
Component loss functions (CLFs) similar to those used in orthogonal rotation are introduced to defin...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
With the usual estimation methods of factor models, the estimated factors are notoriously difficult ...