This technical note proposes a novel profile likelihood method for estimating the covariance parameters in exploratory factor analysis of high-dimensional Gaussian datasets with fewer observations than number of variables. An implicitly restarted Lanczos algorithm and a limited-memory quasi-Newton method are implemented to develop a matrix-free framework for likelihood maximization. Simulation results show that our method is substantially faster than the expectation-maximization solution without sacrificing accuracy. Our method is applied to fit factor models on data from suicide attempters, suicide ideators, and a control group. Supplementary materials for this article are available online
Bayesian sparse factor models have proven useful for characterizing dependence in multivariate data,...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
This paper proposes a novel profile likelihood method for estimating the covariance parameters in ex...
This technical note proposes a novel profile likelihood method for estimating the covariance paramet...
In an approach aiming at high-dimensional situations, we first introduce a distribution-free approac...
In exploratory or unrestricted factor analysis, all factor loadings are free to be estimated. In obl...
A new approach for exploratory factor analysis (EFA) of data matrices with more variables p than obs...
In this paper, the problem of fitting the exploratory factor analysis (EFA) model to data matrices w...
Sparse principal component analysis is a very active research area in the last decade. It produces c...
Statistical boosting represents a very effective method for fitting complex models, while performing...
Abstract Factor analysis is a classical multivariate dimensionality reduction techniq...
The classical exploratory factor analysis (EFA) finds estimates for the factor loadings matrix and t...
The classical exploratory factor analysis (EFA) finds estimates for the factor loadings matrix and t...
A Metropolis–Hastings Robbins–Monro (MH-RM) algorithm for high-dimensional maximum marginal likeliho...
Bayesian sparse factor models have proven useful for characterizing dependence in multivariate data,...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...
This paper proposes a novel profile likelihood method for estimating the covariance parameters in ex...
This technical note proposes a novel profile likelihood method for estimating the covariance paramet...
In an approach aiming at high-dimensional situations, we first introduce a distribution-free approac...
In exploratory or unrestricted factor analysis, all factor loadings are free to be estimated. In obl...
A new approach for exploratory factor analysis (EFA) of data matrices with more variables p than obs...
In this paper, the problem of fitting the exploratory factor analysis (EFA) model to data matrices w...
Sparse principal component analysis is a very active research area in the last decade. It produces c...
Statistical boosting represents a very effective method for fitting complex models, while performing...
Abstract Factor analysis is a classical multivariate dimensionality reduction techniq...
The classical exploratory factor analysis (EFA) finds estimates for the factor loadings matrix and t...
The classical exploratory factor analysis (EFA) finds estimates for the factor loadings matrix and t...
A Metropolis–Hastings Robbins–Monro (MH-RM) algorithm for high-dimensional maximum marginal likeliho...
Bayesian sparse factor models have proven useful for characterizing dependence in multivariate data,...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Sparse Factor Analysis (SFA) is often used for the analysis of high dimensional data, providing simp...