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Recovering Petaflops in Contrastive Semi-Supervised Learning of Visual Representations

2020-06-18 18:44:13
Mahmoud Assran, Nicolas Ballas, Lluis Castrejon, Michael Rabbat

Abstract

We investigate a strategy for improving the computational efficiency of contrastive learning of visual representations by leveraging a small amount of supervised information during pre-training. We propose a semi-supervised loss, SuNCEt, based on noise-contrastive estimation, that aims to distinguish examples of different classes in addition to the self-supervised instance-wise pretext tasks. We find that SuNCEt can be used to match the semi-supervised learning accuracy of previous contrastive approaches with significantly less computational effort. Our main insight is that leveraging even a small amount of labeled data during pre-training, and not only during fine-tuning, provides an important signal that can significantly accelerate contrastive learning of visual representations.

Abstract (translated)

URL

https://arxiv.org/abs/2006.10803

PDF

https://arxiv.org/pdf/2006.10803.pdf


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