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Single- and Multiple-Group Penalized Factor Analysis: A Trust-Region Algorithm Approach with Integrated Automatic Multiple Tuning Parameter Selection

Elena Geminiani, Giampiero Marra, Irini Moustaki

2021Psychometrika17 citationsDOIOpen Access PDF

Abstract

Penalized factor analysis is an efficient technique that produces a factor loading matrix with many zero elements thanks to the introduction of sparsity-inducing penalties within the estimation process. However, sparse solutions and stable model selection procedures are only possible if the employed penalty is non-differentiable, which poses certain theoretical and computational challenges. This article proposes a general penalized likelihood-based estimation approach for single- and multiple-group factor analysis models. The framework builds upon differentiable approximations of non-differentiable penalties, a theoretically founded definition of degrees of freedom, and an algorithm with integrated automatic multiple tuning parameter selection that exploits second-order analytical derivative information. The proposed approach is evaluated in two simulation studies and illustrated using a real data set. All the necessary routines are integrated into the R package penfa.

Topics & Concepts

Differentiable functionComputer scienceSelection (genetic algorithm)AlgorithmSet (abstract data type)Factor (programming language)Process (computing)Degrees of freedom (physics and chemistry)Mathematical optimizationExploitMathematicsArtificial intelligenceProgramming languageOperating systemPhysicsQuantum mechanicsComputer securityMathematical analysisStatistical Methods and InferenceTensor decomposition and applicationsGenetic and phenotypic traits in livestock