Optimal Binary Classifier Aggregation for General Losses
Abstract
We address the problem of aggregating an ensemble of predictors with known loss bounds in a semi-supervised binary classification setting, to minimize prediction loss incurred on the unlabeled data. We find the minimax optimal predictions for a very general class of loss functions including all convex and many non-convex losses, extending a recent analysis of the problem for misclassification error. The result is a family of semi-supervised ensemble aggregation algorithms which are as efficient as linear learning by convex optimization, but are minimax optimal without any relaxations. Their decision rules take a form familiar in decision theory -- applying sigmoid functions to a notion of ensemble margin -- without the assumptions typically made in margin-based learning.
Cite
@article{arxiv.1510.00452,
title = {Optimal Binary Classifier Aggregation for General Losses},
author = {Akshay Balsubramani and Yoav Freund},
journal= {arXiv preprint arXiv:1510.00452},
year = {2016}
}
Comments
NIPS 2016