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Hybrid Discriminative-Generative Training via Contrastive Learning

Published 5 years agoVersion 2arXiv:2007.09070

Authors

Hao Liu, Pieter Abbeel

Categories

cs.LGcs.CVstat.ML

Abstract

Contrastive learning and supervised learning have both seen significant progress and success. However, thus far they have largely been treated as two separate objectives, brought together only by having a shared neural network. In this paper we show that through the perspective of hybrid discriminative-generative training of energy-based models we can make a direct connection between contrastive learning and supervised learning. Beyond presenting this unified view, we show our specific choice of approximation of the energy-based loss outperforms the existing practice in terms of classification accuracy of WideResNet on CIFAR-10 and CIFAR-100. It also leads to improved performance on robustness, out-of-distribution detection, and calibration.

Hybrid Discriminative-Generative Training via Contrastive Learning

5 years ago
v2
2 authors

Categories

cs.LGcs.CVstat.ML

Abstract

Contrastive learning and supervised learning have both seen significant progress and success. However, thus far they have largely been treated as two separate objectives, brought together only by having a shared neural network. In this paper we show that through the perspective of hybrid discriminative-generative training of energy-based models we can make a direct connection between contrastive learning and supervised learning. Beyond presenting this unified view, we show our specific choice of approximation of the energy-based loss outperforms the existing practice in terms of classification accuracy of WideResNet on CIFAR-10 and CIFAR-100. It also leads to improved performance on robustness, out-of-distribution detection, and calibration.

Authors

Hao Liu, Pieter Abbeel

arXiv ID: 2007.09070
Published Jul 17, 2020

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