cs.AI updates on arXiv.org 09月30日
基于代数几何的符号回归新方法
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本文提出一种基于代数几何的符号回归系统,用于自动化和加速科学方法。该系统可以自动生成缺失的公理,以解释新的数据和假设,即使现有理论不完整或错误。通过实例演示了其在解释开普勒第三定律等定律时的有效性。

arXiv:2509.23004v1 Announce Type: new Abstract: A core goal in modern science is to harness recent advances in AI and computer processing to automate and accelerate the scientific method. Symbolic regression can fit interpretable models to data, but these models often sit outside established theory. Recent systems (e.g., AI Descartes, AI Hilbert) enforce derivability from prior axioms. However, sometimes new data and associated hypotheses derived from data are not consistent with existing theory because the existing theory is incomplete or incorrect. Automating abductive inference to close this gap remains open. We propose a solution: an algebraic geometry-based system that, given an incomplete axiom system and a hypothesis that it cannot explain, automatically generates a minimal set of missing axioms that suffices to derive the axiom, as long as axioms and hypotheses are expressible as polynomial equations. We formally establish necessary and sufficient conditions for the successful retrieval of such axioms. We illustrate the efficacy of our approach by demonstrating its ability to explain Kepler's third law and a few other laws, even when key axioms are absent.

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符号回归 代数几何 科学方法 公理生成 数据解释
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