arxiv
PublishedJune 5, 2026 at 4:00 AM
Gradient Descent with Large Step Size Restores Symmetry in Deep Linear Networks with Multi-Pathway
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arXiv:2606.05219v1 Announce Type: new Abstract: Recent analyses of multi-pathway Deep Linear Networks use Gradient Flow to predict a "winner-takes-all" specialization in which path symmetry breaks and each feature concentrates in a single pathway. In this work, we show that discrete Gradient Descent
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Originally published on arxiv ↗