cs.AI updates on arXiv.org 07月09日 12:01
Current Practices for Building LLM-Powered Reasoning Tools Are Ad Hoc -- and We Can Do Better
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文章提出神经符号转换系统作为构建神经符号AR工具的基础模型,强调其在逻辑推理上的扩展潜力,并阐述如何将其实现于逻辑编程语言中。

arXiv:2507.05886v1 Announce Type: new Abstract: There is growing excitement about building software verifiers, synthesizers, and other Automated Reasoning (AR) tools by combining traditional symbolic algorithms and Large Language Models (LLMs). Unfortunately, the current practice for constructing such neurosymbolic AR systems is an ad hoc programming model that does not have the strong guarantees of traditional symbolic algorithms, nor a deep enough synchronization of neural networks and symbolic reasoning to unlock the full potential of LLM-powered reasoning. I propose Neurosymbolic Transition Systems as a principled computational model that can underlie infrastructure for building neurosymbolic AR tools. In this model, symbolic state is paired with intuition, and state transitions operate over symbols and intuition in parallel. I argue why this new paradigm can scale logical reasoning beyond current capabilities while retaining the strong guarantees of symbolic algorithms, and I sketch out how the computational model I propose can be reified in a logic programming language.

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神经符号AR 逻辑推理 转换系统 逻辑编程 大型语言模型
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