Semi-supervised Ranking Pursuit
Abstract
We propose a novel sparse preference learning/ranking algorithm. Our algorithm approximates the true utility function by a weighted sum of basis functions using the squared loss on pairs of data points, and is a generalization of the kernel matching pursuit method. It can operate both in a supervised and a semi-supervised setting and allows efficient search for multiple, near-optimal solutions. Furthermore, we describe the extension of the algorithm suitable for combined ranking and regression tasks. In our experiments we demonstrate that the proposed algorithm outperforms several state-of-the-art learning methods when taking into account unlabeled data and performs comparably in a supervised learning scenario, while providing sparser solutions.
Cite
@article{arxiv.1307.0846,
title = {Semi-supervised Ranking Pursuit},
author = {Evgeni Tsivtsivadze and Tom Heskes},
journal= {arXiv preprint arXiv:1307.0846},
year = {2013}
}