2023
DOI: 10.48550/arxiv.2303.12928
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Leveraging Multi-time Hamilton-Jacobi PDEs for Certain Scientific Machine Learning Problems

Abstract: Hamilton-Jacobi partial differential equations (HJ PDEs) have deep connections with a wide range of fields, including optimal control, differential games, and imaging sciences. By considering the time variable to be a higher dimensional quantity, HJ PDEs can be extended to the multi-time case. In this paper, we establish a novel theoretical connection between specific optimization problems arising in machine learning and the multi-time Hopf formula, which corresponds to a representation of the solution to cert… Show more

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