人工神经网络中的定理证明:数学人工智能的新领域

IF 1.5 1区 哲学 Q1 HISTORY & PHILOSOPHY OF SCIENCE
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引用次数: 0

摘要

摘要 计算机辅助定理证明是数学方法论中一个日益重要的组成部分,也是人工智能(AI)研究中一个由来已久的课题。然而,目前的定理证明软件在提供新的证明方面功能有限。更重要的是,它们无法区分有趣的定理和证明与琐碎的定理和证明。要想让计算机在定理证明领域取得进一步发展,就必须彻底改变软件的功能。最近,机器学习在解决数学任务方面取得的成果表明,深度人工神经网络很有可能学习符号数学处理。在本文中,我分析了这种神经网络在证明数学定理方面的理论前景。特别是,我将重点放在如何将这种人工智能系统融入定理证明的实践中,以及这会产生什么后果。在最乐观的情况下,这包括自主自动定理证明器(AATP)的可能性。在此,我将讨论这样的人工智能系统能否或是否应该成为数学界的活跃分子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Theorem proving in artificial neural networks: new frontiers in mathematical AI

Abstract

Computer assisted theorem proving is an increasingly important part of mathematical methodology, as well as a long-standing topic in artificial intelligence (AI) research. However, the current generation of theorem proving software have limited functioning in terms of providing new proofs. Importantly, they are not able to discriminate interesting theorems and proofs from trivial ones. In order for computers to develop further in theorem proving, there would need to be a radical change in how the software functions. Recently, machine learning results in solving mathematical tasks have shown early promise that deep artificial neural networks could learn symbolic mathematical processing. In this paper, I analyze the theoretical prospects of such neural networks in proving mathematical theorems. In particular, I focus on the question how such AI systems could be incorporated in practice to theorem proving and what consequences that could have. In the most optimistic scenario, this includes the possibility of autonomous automated theorem provers (AATP). Here I discuss whether such AI systems could, or should, become accepted as active agents in mathematical communities.

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来源期刊
European Journal for Philosophy of Science
European Journal for Philosophy of Science HISTORY & PHILOSOPHY OF SCIENCE-
CiteScore
2.60
自引率
13.30%
发文量
57
期刊介绍: The European Journal for Philosophy of Science publishes groundbreaking works that can deepen understanding of the concepts and methods of the sciences, as they explore increasingly many facets of the world we live in. It is of direct interest to philosophers of science coming from different perspectives, as well as scientists, citizens and policymakers. The journal is interested in articles from all traditions and all backgrounds, as long as they engage with the sciences in a constructive, and critical, way. The journal represents the various longstanding European philosophical traditions engaging with the sciences, but welcomes articles from every part of the world.
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