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Informative Neural Ensemble Kalman Learning

Machine Learning 2020-08-25 v1 Dynamical Systems Chaotic Dynamics Machine Learning

Abstract

In stochastic systems, informative approaches select key measurement or decision variables that maximize information gain to enhance the efficacy of model-related inferences. Neural Learning also embodies stochastic dynamics, but informative Learning is less developed. Here, we propose Informative Ensemble Kalman Learning, which replaces backpropagation with an adaptive Ensemble Kalman Filter to quantify uncertainty and enables maximizing information gain during Learning. After demonstrating Ensemble Kalman Learning's competitive performance on standard datasets, we apply the informative approach to neural structure learning. In particular, we show that when trained from the Lorenz-63 system's simulations, the efficaciously learned structure recovers the dynamical equations. To the best of our knowledge, Informative Ensemble Kalman Learning is new. Results suggest that this approach to optimized Learning is promising.

Keywords

Cite

@article{arxiv.2008.09915,
  title  = {Informative Neural Ensemble Kalman Learning},
  author = {Margaret Trautner and Gabriel Margolis and Sai Ravela},
  journal= {arXiv preprint arXiv:2008.09915},
  year   = {2020}
}

Comments

ten pages; accepted for presentation in DDDAS-2020

R2 v1 2026-06-23T18:02:27.222Z