Learning Partially Known Stochastic Dynamics with Empirical PAC Bayes
Abstract
Neural Stochastic Differential Equations model a dynamical environment with neural nets assigned to their drift and diffusion terms. The high expressive power of their nonlinearity comes at the expense of instability in the identification of the large set of free parameters. This paper presents a recipe to improve the prediction accuracy of such models in three steps: i) accounting for epistemic uncertainty by assuming probabilistic weights, ii) incorporation of partial knowledge on the state dynamics, and iii) training the resultant hybrid model by an objective derived from a PAC-Bayesian generalization bound. We observe in our experiments that this recipe effectively translates partial and noisy prior knowledge into an improved model fit.
Cite
Text
Haußmann et al. "Learning Partially Known Stochastic Dynamics with Empirical PAC Bayes." Artificial Intelligence and Statistics, 2021.Markdown
[Haußmann et al. "Learning Partially Known Stochastic Dynamics with Empirical PAC Bayes." Artificial Intelligence and Statistics, 2021.](https://mlanthology.org/aistats/2021/haumann2021aistats-learning/)BibTeX
@inproceedings{haumann2021aistats-learning,
title = {{Learning Partially Known Stochastic Dynamics with Empirical PAC Bayes}},
author = {Haußmann, Manuel and Gerwinn, Sebastian and Look, Andreas and Rakitsch, Barbara and Kandemir, Melih},
booktitle = {Artificial Intelligence and Statistics},
year = {2021},
pages = {478-486},
volume = {130},
url = {https://mlanthology.org/aistats/2021/haumann2021aistats-learning/}
}