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Lasso and Related Methodologies

Learning Interactions via Hierarchical Group-Lasso Regularization

Pages 627-654
Received 01 Nov 2013
Accepted author version posted online: 17 Jul 2014
Published online:16 Sep 2015
 
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We introduce a method for learning pairwise interactions in a linear regression or logistic regression model in a manner that satisfies strong hierarchy: whenever an interaction is estimated to be nonzero, both its associated main effects are also included in the model. We motivate our approach by modeling pairwise interactions for categorical variables with arbitrary numbers of levels, and then show how we can accommodate continuous variables as well. Our approach allows us to dispense with explicitly applying constraints on the main effects and interactions for identifiability, which results in interpretable interaction models. We compare our method with existing approaches on both simulated and real data, including a genome-wide association study, all using our R package glinternet.

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