Metric Learning from Imbalanced Data
Machine Learning
2019-09-05 v1 Machine Learning
Abstract
A key element of any machine learning algorithm is the use of a function that measures the dis/similarity between data points. Given a task, such a function can be optimized with a metric learning algorithm. Although this research field has received a lot of attention during the past decade, very few approaches have focused on learning a metric in an imbalanced scenario where the number of positive examples is much smaller than the negatives. Here, we address this challenging task by designing a new Mahalanobis metric learning algorithm (IML) which deals with class imbalance. The empirical study performed shows the efficiency of IML.
Cite
@article{arxiv.1909.01651,
title = {Metric Learning from Imbalanced Data},
author = {Léo Gautheron and Emilie Morvant and Amaury Habrard and Marc Sebban},
journal= {arXiv preprint arXiv:1909.01651},
year = {2019}
}