Binarsity: a penalization for one-hot encoded features in linear supervised learning
Abstract
This paper deals with the problem of large-scale linear supervised learning in settings where a large number of continuous features are available. We propose to combine the well-known trick of one-hot encoding of continuous features with a new penalization called \emph{binarsity}. In each group of binary features coming from the one-hot encoding of a single raw continuous feature, this penalization uses total-variation regularization together with an extra linear constraint. This induces two interesting properties on the model weights of the one-hot encoded features: they are piecewise constant, and are eventually block sparse. Non-asymptotic oracle inequalities for generalized linear models are proposed. Moreover, under a sparse additive model assumption, we prove that our procedure matches the state-of-the-art in this setting. Numerical experiments illustrate the good performances of our approach on several datasets. It is also noteworthy that our method has a numerical complexity comparable to standard penalization.
Keywords
Cite
@article{arxiv.1703.08619,
title = {Binarsity: a penalization for one-hot encoded features in linear supervised learning},
author = {Mokhtar Z. Alaya and Simon Bussy and Stéphane Gaïffas and Agathe Guilloux},
journal= {arXiv preprint arXiv:1703.08619},
year = {2019}
}