cs.AI updates on arXiv.org 07月29日 12:21
On the Limits of Hierarchically Embedded Logic in Classical Neural Networks
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提出神经网络逻辑推理限制模型,分析神经网络深度对逻辑推理的影响,揭示逻辑表达上限,为语言模型架构优化和可解释性提供理论依据。

arXiv:2507.20960v1 Announce Type: new Abstract: We propose a formal model of reasoning limitations in large neural net models for language, grounded in the depth of their neural architecture. By treating neural networks as linear operators over logic predicate space we show that each layer can encode at most one additional level of logical reasoning. We prove that a neural network of depth a particular depth cannot faithfully represent predicates in a one higher order logic, such as simple counting over complex predicates, implying a strict upper bound on logical expressiveness. This structure induces a nontrivial null space during tokenization and embedding, excluding higher-order predicates from representability. Our framework offers a natural explanation for phenomena such as hallucination, repetition, and limited planning, while also providing a foundation for understanding how approximations to higher-order logic may emerge. These results motivate architectural extensions and interpretability strategies in future development of language models.

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神经网络 逻辑推理 语言模型 架构优化 可解释性
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