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<b>lslx</b>: Semi-Confirmatory Structural Equation Modeling via Penalized Likelihood

Po‐Hsien Huang

2020Journal of Statistical Software32 citationsDOIOpen Access PDF

Abstract

Sparse estimation via penalized likelihood (PL) is now a popular approach to learn the associations among a large set of variables. This paper describes an R package called lslx that implements PL methods for semi-confirmatory structural equation modeling (SEM). In this semi-confirmatory approach, each model parameter can be specified as free/fixed for theory testing, or penalized for exploration. By incorporating either a L1 or minimax concave penalty, the sparsity pattern of the parameter matrix can be efficiently explored. Package lslx minimizes the PL criterion through a quasi-Newton method. The algorithm conducts line search and checks the first-order condition in each iteration to ensure the optimality of the obtained solution. A numerical comparison between competing packages shows that lslx can reliably find PL estimates with the least time. The current package also supports other advanced functionalities, including a two-stage method with auxiliary variables for missing data handling and a reparameterized multi-group SEM to explore population heterogeneity.

Topics & Concepts

MinimaxStructural equation modelingComputer scienceMathematical optimizationSet (abstract data type)AlgorithmMaximum likelihoodMissing dataMathematicsApplied mathematicsStatisticsMachine learningProgramming languageMachine Learning in Materials ScienceBayesian Modeling and Causal Inference
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