Durumeric, Aleksander E.P. and Chen, Yaoyi and Noé, Frank and Clementi, Cecilia Learning data efficient coarse-grained molecular dynamics from forces and noise. Preprint arXiv . (Unpublished)
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Official URL: https://doi.org/10.48550/arXiv.2407.01286
Abstract
Machine-learned coarse-grained (MLCG) molecular dynamics is a promising option for modeling biomolecules. However, MLCG models currently require large amounts of data from reference atomistic molecular dynamics or substantial computation for training. Denoising score matching -- the technology behind the widely popular diffusion models -- has simultaneously emerged as a machine-learning framework for creating samples from noise. Models in the first category are often trained using atomistic forces, while those in the second category extract the data distribution by reverting noise-based corruption. We unify these approaches to improve the training of MLCG force-fields, reducing data requirements by a factor of 100 while maintaining advantages typical to force-based parameterization. The methods are demonstrated on proteins Trp-Cage and NTL9 and published as open-source code.
Item Type: | Article |
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Subjects: | Mathematical and Computer Sciences Mathematical and Computer Sciences > Mathematics Mathematical and Computer Sciences > Mathematics > Applied Mathematics |
Divisions: | Department of Mathematics and Computer Science > Institute of Mathematics |
ID Code: | 3164 |
Deposited By: | Lukas-Maximilian Jaeger |
Deposited On: | 23 Aug 2024 10:31 |
Last Modified: | 23 Aug 2024 10:31 |
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