4.6 Article

Distance-Dependent Metric Learning

Journal

IEEE SIGNAL PROCESSING LETTERS
Volume 26, Issue 2, Pages 357-361

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LSP.2019.2891913

Keywords

Metric learning; distance dependent; pairwise classification

Funding

  1. China Postdoctoral Science Foundation [2018M641355]
  2. National Natural Science Foundation of China [61403224]

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In most existing metric learning methods, the data pairs are equally treated without considering their diversity. In fact, for pairs with different distances, the main purpose of the metric acted on them has some differences. If the pairs have smaller distance, metric should focus more on expanding the negative pairs, which are more easily misjudged. While if the pairs have larger distance, metric should focus more on shrinking the positive pairs. However, mast metric learning methods neglect these differences. In this letter, we propose a distance-dependent metric learning ((DML)-M-2) method. It partitions data pairs into different clusters according to the l(2) distance between them. Each cluster is associated with a Mahalanobis metric that learns the pairs' distance. This not only allows us to make each metric more targeted and adapt to the data diversity flexibly, but also avoids the problem of computing the distance between points assigned to different clusters, which happens in some local metric learning methods. (DML)-M-2 is further extended to D-3 ML to embrace the nonlinear capacity of neural network. Experiments on UCI datasets and speaker recognition i-vector machine learning challenge show that the proposed methods are superior to other metric learning methods.

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