Finding significant combinations of features in the presence of categorical covariates

Volume: 29, Pages: 2279 - 2287
Published: Jan 1, 2016
Abstract
In high-dimensional settings, where the number of features p is typically much larger than the number of samples n, methods which can systematically examine arbitrary combinations of features, a huge 2^p-dimensional space, have recently begun to be explored. However, none of the current methods is able to assess the association between feature combinations and a target variable while conditioning on a categorical covariate, in order to correct...
Paper Details
Title
Finding significant combinations of features in the presence of categorical covariates
Published Date
Jan 1, 2016
Volume
29
Pages
2279 - 2287
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