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Title: A Measure-Theoretic Analysis of Reasoning: Structural Generalization and Approximation Limits Source: http://arxiv.org/abs/2605.19944v1 Summary: This paper establishes fundamental theoretical bounds for LLM reasoning, proving that scaling physical layer depth is a non-negotiable requirement for out-of-distribution generalization that cannot be bypassed by scaling width. It also formalizes why specific architectural choices, such as shift-invariant embeddings, are mathematically necessary to maintain reasoning equivariance across domain shifts.
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