Safe Triplet Screening for Distance Metric Learning

Bibliographic Details
Title: Safe Triplet Screening for Distance Metric Learning
Authors: Yoshida, Tomoki, Takeuchi, Ichiro, Karasuyama, Masayuki
Publication Year: 2018
Collection: Statistics
Subject Terms: Statistics - Machine Learning
More Details: We study safe screening for metric learning. Distance metric learning can optimize a metric over a set of triplets, each one of which is defined by a pair of same class instances and an instance in a different class. However, the number of possible triplets is quite huge even for a small dataset. Our safe triplet screening identifies triplets which can be safely removed from the optimization problem without losing the optimality. Compared with existing safe screening studies, triplet screening is particularly significant because of (1) the huge number of possible triplets, and (2) the semi-definite constraint in the optimization. We derive several variants of screening rules, and analyze their relationships. Numerical experiments on benchmark datasets demonstrate the effectiveness of safe triplet screening.
Comment: 36 pages, 12 figures
Document Type: Working Paper
Access URL: http://arxiv.org/abs/1802.03923
Accession Number: edsarx.1802.03923
Database: arXiv
More Details
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