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Variable selection in multivariate multiple regression

Asokan Mulayath Variyath, Anita Brobbey

2020PLoS ONE29 citationsDOIOpen Access PDF

Abstract

INTRODUCTION: In many practical situations, we are interested in the effect of covariates on correlated multiple responses. In this paper, we focus on estimation and variable selection in multi-response multiple regression models. Correlation among the response variables must be modeled for valid inference. METHOD: We used an extension of the generalized estimating equation (GEE) methodology to simultaneously analyze binary, count, and continuous outcomes with nonlinear functions. Variable selection plays an important role in modeling correlated responses because of the large number of model parameters that must be estimated. We propose a penalized-likelihood approach based on the extended GEEs for simultaneous parameter estimation and variable selection. RESULTS AND CONCLUSIONS: We conducted a series of Monte Carlo simulations to investigate the performance of our method, considering different sample sizes and numbers of response variables. The results showed that our method works well compared to treating the responses as uncorrelated. We recommend using an unstructured correlation model with the Bayesian information criterion (BIC) to select the tuning parameters. We demonstrated our method using data from a concrete slump test.

Topics & Concepts

CovariateFeature selectionStatisticsMultivariate statisticsMathematicsMonte Carlo methodModel selectionGeneralized linear modelBayesian information criterionLasso (programming language)InferenceComputer scienceMachine learningArtificial intelligenceWorld Wide WebAdvanced Statistical Methods and ModelsStatistical Methods and Bayesian InferenceStatistical Methods in Clinical Trials