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arxiv:2601.21255

Hypersolid: Emergent Vision Representations via Short-Range Repulsion

Published on Jan 29
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Abstract

Hypersolid prevents representation collapse in self-supervised learning by treating representation learning as a discrete packing problem with hard-ball repulsion constraints.

AI-generated summary

A recurring challenge in self-supervised learning is preventing representation collapse. Existing solutions typically rely on global regularization, such as maximizing distances, decorrelating dimensions or enforcing certain distributions. We instead reinterpret representation learning as a discrete packing problem, where preserving information simplifies to maintaining injectivity. We operationalize this in Hypersolid, a method using short-range hard-ball repulsion to prevent local collisions. This constraint results in a high-separation geometric regime that preserves augmentation diversity, excelling on fine-grained and low-resolution classification tasks.

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