Boosting for Comparison-Based Learning
Abstract
We consider the problem of classification in a comparison-based setting: given a set of objects, we only have access to triplet comparisons of the form "object is closer to object than to object ." In this paper we introduce TripletBoost, a new method that can learn a classifier just from such triplet comparisons. The main idea is to aggregate the triplets information into weak classifiers, which can subsequently be boosted to a strong classifier. Our method has two main advantages: (i) it is applicable to data from any metric space, and (ii) it can deal with large scale problems using only passively obtained and noisy triplets. We derive theoretical generalization guarantees and a lower bound on the number of necessary triplets, and we empirically show that our method is both competitive with state of the art approaches and resistant to noise.
Cite
@article{arxiv.1810.13333,
title = {Boosting for Comparison-Based Learning},
author = {Michaël Perrot and Ulrike von Luxburg},
journal= {arXiv preprint arXiv:1810.13333},
year = {2019}
}
Comments
This is the extended version (38 pages) of a paper accepted to the International Joint Conference on Artificial Intelligence (IJCAI) 2019