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Embedding Geometries of Contrastive Language-Image Pre-Training

Alternative geometries including Euclidean CLIP (EuCLIP) match or exceed CLIP’s performance in language-image pre-training while supporting hierarchical relationships.

Year
2024
Venue
arXiv 2024
Authors
2
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arxiv.org/abs/2409.13079ARXIV-DEFAULT
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Abstract

Since the publication of CLIP, the approach of using InfoNCE loss for contrastive pre-training has become widely popular for bridging two or more modalities. Despite its wide adoption, CLIP's original design choices of L2 normalization and cosine similarity logit have rarely been revisited. We have systematically experimented with alternative geometries and softmax logits for language-image pre-training and identified that variants with intuitive Euclidean geometry, Euclidean CLIP (EuCLIP), match or exceed the performance of CLIP and support hierarchical relationships at least as well as more complicated hyperbolic alternative.

Authors

2