计算机科学
利用
人工神经网络
代表(政治)
过程(计算)
主题(文档)
科学发现
机器学习
概念架构(architecture)
数据科学
物理系统
建筑
期限(时间)
物理定律
人工智能
认知科学
物理
心理学
艺术
视觉艺术
图书馆学
操作系统
政治
法学
量子力学
计算机安全
政治学
作者
Raban Iten,Tony Metger,Henrik Wilming,Lídia del Rio,Renato Renner
标识
DOI:10.1103/physrevlett.124.010508
摘要
Despite the success of neural networks at solving concrete physics problems, their use as a general-purpose tool for scientific discovery is still in its infancy. Here, we approach this problem by modeling a neural network architecture after the human physical reasoning process, which has similarities to representation learning. This allows us to make progress towards the long-term goal of machine-assisted scientific discovery from experimental data without making prior assumptions about the system. We apply this method to toy examples and show that the network finds the physically relevant parameters, exploits conservation laws to make predictions, and can help to gain conceptual insights, e.g., Copernicus’ conclusion that the solar system is heliocentric.Received 17 July 2019DOI:https://doi.org/10.1103/PhysRevLett.124.010508© 2020 American Physical SocietyPhysics Subject Headings (PhySH)Research AreasMachine learningQuantum foundationsQuantum tomographyPhysical SystemsArtificial neural networksInterdisciplinary PhysicsQuantum Information
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