Hyperbolic Contrastive Learning
- URL: http://arxiv.org/abs/2302.01409v1
- Date: Thu, 2 Feb 2023 20:47:45 GMT
- Title: Hyperbolic Contrastive Learning
- Authors: Yun Yue, Fangzhou Lin, Kazunori D Yamada, Ziming Zhang
- Abstract summary: We propose a novel contrastive learning framework to learn semantic relationships in the hyperbolic space.
We show that our proposed method achieves better results on self-supervised pretraining, supervised classification, and higher robust accuracy than baseline methods.
- Score: 12.170564544949308
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Learning good image representations that are beneficial to downstream tasks
is a challenging task in computer vision. As such, a wide variety of
self-supervised learning approaches have been proposed. Among them, contrastive
learning has shown competitive performance on several benchmark datasets. The
embeddings of contrastive learning are arranged on a hypersphere that results
in using the inner (dot) product as a distance measurement in Euclidean space.
However, the underlying structure of many scientific fields like social
networks, brain imaging, and computer graphics data exhibit highly
non-Euclidean latent geometry. We propose a novel contrastive learning
framework to learn semantic relationships in the hyperbolic space. Hyperbolic
space is a continuous version of trees that naturally owns the ability to model
hierarchical structures and is thus beneficial for efficient contrastive
representation learning. We also extend the proposed Hyperbolic Contrastive
Learning (HCL) to the supervised domain and studied the adversarial robustness
of HCL. The comprehensive experiments show that our proposed method achieves
better results on self-supervised pretraining, supervised classification, and
higher robust accuracy than baseline methods.
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