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Batch Decorrelation for Active Metric Learning

20 May 2020
Priyadarshini Kumari
Ritesh Goru
Siddhartha Chaudhuri
Subhasis Chaudhuri
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Abstract

We present an active learning strategy for training parametric models of distance metrics, given triplet-based similarity assessments: object xix_ixi​ is more similar to object xjx_jxj​ than to xkx_kxk​. In contrast to prior work on class-based learning, where the fundamental goal is classification and any implicit or explicit metric is binary, we focus on {\em perceptual} metrics that express the {\em degree} of (dis)similarity between objects. We find that standard active learning approaches degrade when annotations are requested for {\em batches} of triplets at a time: our studies suggest that correlation among triplets is responsible. In this work, we propose a novel method to {\em decorrelate} batches of triplets, that jointly balances informativeness and diversity while decoupling the choice of heuristic for each criterion. Experiments indicate our method is general, adaptable, and outperforms the state-of-the-art.

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