Towards Discovery of the Differential Equations

Pub Date : 2024-03-11 DOI:10.1134/S1064562423701156
A. A. Hvatov, R. V. Titov
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Abstract

Differential equation discovery, a machine learning subfield, is used to develop interpretable models, particularly, in nature-related applications. By expertly incorporating the general parametric form of the equation of motion and appropriate differential terms, algorithms can autonomously uncover equations from data. This paper explores the prerequisites and tools for independent equation discovery without expert input, eliminating the need for equation form assumptions. We focus on addressing the challenge of assessing the adequacy of discovered equations when the correct equation is unknown, with the aim of providing insights for reliable equation discovery without prior knowledge of the equation form.

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发现微分方程
摘要--微分方程发现是机器学习的一个子领域,用于开发可解释的模型,特别是在与自然相关的应用中。通过专家将运动方程的一般参数形式和适当的微分项结合起来,算法可以自主地从数据中发现方程。本文探讨了无需专家输入、无需方程形式假设即可自主发现方程的先决条件和工具。我们的重点是解决在正确方程未知的情况下评估已发现方程的适当性这一难题,目的是在事先不了解方程形式的情况下为可靠的方程发现提供见解。
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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