PAPER DIGEST
Most Influential ICML 2010 Paper · 2026-03 edition
Metric Learning To Rank
Abstract
We study metric learning as problem of information retrieval. We present a general metric learning algorithm, based on the structural SVM framework, to learn a metric such that rankings of data induced by distance from a query can be optimized against various ranking measures, such as AUC, Precision-at-k, MRR, MAP or NDCG. We demonstrate experimental results on standard classification data sets, and a large-scale online dating recommendation problem.