Effectively training neural ordinary differential equations for data-driven dynamics discovery > 세미나

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Effectively training neural ordinary differential equations for data-d…

홍영준교수님 0 5704
구분 응용수학
일정 2026-01-21 13:30 ~ 15:00
강연자 고준혁 (고등과학원)
기타
담당교수 홍영준

Neural ordinary differential equations (neural ODEs) are effective priors for modeling continuous time dynamical systems, being neural network analogues of the differential equation-based modeling paradigm of the physical sciences. However, training these models can be difficult in practice, especially for long or chaotic time series data.


In this talk, I will first provide an overview of neural ODEs, followed by a discussion of their unstable training problem. After presenting two methods to effectively train neural ODEs - homotopy-based training, and neighborhood-based training - I will close with a brief showcase of an experimental physics application: inverting atomic force microscope measurements with neural ODEs to infer unknown tip-sample interaction forces.

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Research Institute of Mathematics
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Tel. 02-880-6562 / Fax. 02-877-6541 su305@snu.ac.kr

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