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FEB Research Report KBI_1528

Publication date: 2015-11-01
Publisher: KU Leuven - Faculty of Economics and Business; Leuven (Belgium)

Author:

Wilms, Ines
Croux, Christophe

Keywords:

Categorical variables, Group Lasso, Multivariate Regression, Penalized Maximum Likelihood, Sparsity, Time Series

Abstract:

We study a group lasso estimator for the multivariate linear regression model that accounts for correlated error terms. A block coordinate descent algorithm is used to compute this estimator. We perform a simulation study with categorical data and multivariate time series data, typical settings with a natural grouping among the predictor variables. Our simulation studies show the good performance of the proposed group lasso estimator compared to alternative estimators. We illustrate the method on a time series data set of gene expressions.