Rigor with Machine Learning from Field Theory to the Poincaré Conjecture

ArXiv Pub Date : 2024-02-20 DOI:10.48550/arXiv.2402.13321
Sergei Gukov, James Halverson, Fabian Ruehle
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Abstract

Machine learning techniques are increasingly powerful, leading to many breakthroughs in the natural sciences, but they are often stochastic, error-prone, and blackbox. How, then, should they be utilized in fields such as theoretical physics and pure mathematics that place a premium on rigor and understanding? In this Perspective we discuss techniques for obtaining rigor in the natural sciences with machine learning. Non-rigorous methods may lead to rigorous results via conjecture generation or verification by reinforcement learning. We survey applications of these techniques-for-rigor ranging from string theory to the smooth $4$d Poincar\'e conjecture in low-dimensional topology. One can also imagine building direct bridges between machine learning theory and either mathematics or theoretical physics. As examples, we describe a new approach to field theory motivated by neural network theory, and a theory of Riemannian metric flows induced by neural network gradient descent, which encompasses Perelman's formulation of the Ricci flow that was utilized to resolve the $3$d Poincar\'e conjecture.
从场论到波恩卡莱猜想,机器学习的严谨性
机器学习技术越来越强大,在自然科学领域带来了许多突破,但它们往往是随机的、容易出错的、黑箱的。那么,在理论物理和纯数学等注重严谨性和理解力的领域,应该如何利用这些技术呢?在本视角中,我们将讨论在自然科学领域利用机器学习获得严谨性的技术。非严谨方法可通过猜想生成或强化学习验证获得严谨结果。我们考察了这些严谨性技术的应用,从弦理论到低维拓扑学中的光滑 $4$d Poincar\'e 猜想。我们还可以想象,在机器学习理论与数学或理论物理学之间架起一座直接的桥梁。举例来说,我们描述了一种以神经网络理论为动机的场论新方法,以及一种由神经网络梯度下降诱导的黎曼度量流理论,它包含了佩雷尔曼对黎奇流的表述,而佩雷尔曼正是利用黎奇流解决了3美元d Poincar\'e 猜想。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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