人工智能驱动理论发现的三驾马车

Yang-Hui He
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引用次数: 0

摘要

近年来,人工智能算法在纯数学和理论物理学等基础科学领域的应用急剧增加。这或许有悖常理,因为数学科学需要严格的定义、推导和证明,而实验科学则依赖于带有误差的数据建模。在本《视角》中,受历史实例的启发,我们将数学发现的方法分为 "自上而下"、"自下而上 "和 "元数学"。我们回顾了过去几年的一些进展,比较和对比了每种方法的优势和不足。我们认为,虽然理论家在不久的将来绝不会有被人工智能取代的危险,但人类专业知识与人工智能算法的混合将成为理论发现不可或缺的一部分。
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A Triumvirate of AI Driven Theoretical Discovery
Recent years have seen the dramatic rise of the usage of AI algorithms in pure mathematics and fundamental sciences such as theoretical physics. This is perhaps counter-intuitive since mathematical sciences require the rigorous definitions, derivations, and proofs, in contrast to the experimental sciences which rely on the modelling of data with error-bars. In this Perspective, we categorize the approaches to mathematical discovery as "top-down", "bottom-up" and "meta-mathematics", as inspired by historical examples. We review some of the progress over the last few years, comparing and contrasting both the advances and the short-comings in each approach. We argue that while the theorist is in no way in danger of being replaced by AI in the near future, the hybrid of human expertise and AI algorithms will become an integral part of theoretical discovery.
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