Classification of sparse binary vectors
Abstract
In this work we consider a problem of multi-label classification, where each instance is associated with some binary vector. Our focus is to find a classifier which minimizes false negative discoveries under constraints. Depending on the considered set of constraints we propose plug-in methods and provide non-asymptotic analysis under margin type assumptions. Specifically, we analyze two particular examples of constraints that promote sparse predictions: in the first one, we focus on classifiers with -type constraints and in the second one, we address classifiers with bounded false positive discoveries. Both formulations lead to different Bayes rules and, thus, different plug-in approaches. The first considered scenario is the popular multi-label top- procedure: a label is predicted to be relevant if its score is among the largest ones. For this case, we provide an excess risk bound that achieves so called `fast' rates of convergence under a generalization of the margin assumption to this settings. The second scenario differs significantly from the top- settings, as the constraints are distribution dependent. We demonstrate that in this scenario the almost sure control of false positive discoveries is impossible without extra assumptions. To alleviate this issue we propose a sufficient condition for the consistent estimation and provide non-asymptotic upper-bound.
Cite
@article{arxiv.1903.11867,
title = {Classification of sparse binary vectors},
author = {Evgenii Chzhen},
journal= {arXiv preprint arXiv:1903.11867},
year = {2019}
}