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A Matrix-Free Likelihood Method for Exploratory Factor Analysis of High-Dimensional Gaussian Data

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ABSTRACT 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.… Click to show full abstract

ABSTRACT 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.

Keywords: factor analysis; likelihood; method; exploratory factor; likelihood method

Journal Title: Journal of Computational and Graphical Statistics
Year Published: 2020

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