Regressive Virtual Metric Learning
Perrot, Michaël, Habrard, Amaury
–Neural Information Processing Systems
We are interested in supervised metric learning of Mahalanobis like distances. Existing approaches mainly focus on learning a new distance using similarity and dissimilarity constraints between examples. In this paper, instead of bringing closer examples of the same class and pushing far away examples of different classes we propose to move the examples with respect to virtual points. Hence, each example is brought closer to a a priori defined virtual point reducing the number of constraints to satisfy. We show that our approach admits a closed form solution which can be kernelized.
Neural Information Processing Systems
Feb-14-2020, 10:15:39 GMT
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