AI RESEARCH
Flag Varieties: A Geometric Framework for Deep Network Alignment
arXiv CS.AI
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ArXi:2605.09861v1 Announce Type: cross Alignment, the tendency of adjacent weight matrices in deep networks to develop compatible subspace orientations, underlies gradient flow, Neural Collapse, and representation similarity across architectures. Despite extensive empirical documentation, these phenomena have resisted unified theoretical treatment: existing explanations are post-hoc, each fitted to a specific observation with whatever mathematics is at hand. We reverse this direction by deriving the mathematical structure that layerwise alignment inherently demands.