When Does Contrastive Visual Representation Learning Work?
Abstract
Recent self-supervised representation learning techniques have largely closed the gap between supervised and unsupervised learning on ImageNet classification. While the particulars of pretraining on ImageNet are now relatively well understood, the field still lacks widely accepted best practices for replicating this success on other datasets. As a first step in this direction, we study contrastive self-supervised learning on four diverse large-scale datasets. By looking through the lenses of data quantity, data domain, data quality, and task granularity, we provide new insights into the necessary conditions for successful self-supervised learning. Our key findings include observations such as: (i) the benefit of additional pretraining data beyond 500k images is modest, (ii) adding pretraining images from another domain does not lead to more general representations, (iii) corrupted pretraining images have a disparate impact on supervised and self-supervised pretraining, and (iv) contrastive learning lags far behind supervised learning on fine-grained visual classification tasks.
Additional Information
We thank Mason McGill for detailed feedback, and Grant Van Horn, Christine Kaeser-Chen, Yin Cui, Sergey Ioffe, Pietro Perona, and the rest of the Perona Lab for insightful discussions. This work was supported by the Caltech Resnick Sustainability Institute, an NSF Graduate Research Fellowship (grant number DGE1745301), and the Pioneer Centre for AI (DNRF grant number P1).Attached Files
Accepted Version - 2105.05837.pdf
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Additional details
- Eprint ID
- 114160
- Resolver ID
- CaltechAUTHORS:20220406-160758984
- Resnick Sustainability Institute
- NSF Graduate Research Fellowship
- DGE-1745301
- Danish National Research Foundation
- DNRF-P1
- Created
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2022-04-06Created from EPrint's datestamp field
- Updated
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2022-04-06Created from EPrint's last_modified field
- Caltech groups
- Resnick Sustainability Institute