Stabilizing machine learning prediction of dynamics: Novel noise-inspired regularization tested with reservoir computing.

Journal: Neural networks : the official journal of the International Neural Network Society
PMID:

Abstract

Recent work has shown that machine learning (ML) models can skillfully forecast the dynamics of unknown chaotic systems. Short-term predictions of the state evolution and long-term predictions of the statistical patterns of the dynamics ("climate") can be produced by employing a feedback loop, whereby the model is trained to predict forward only one time step, then the model output is used as input for multiple time steps. In the absence of mitigating techniques, however, this feedback can result in artificially rapid error growth ("instability"). One established mitigating technique is to add noise to the ML model training input. Based on this technique, we formulate a new penalty term in the loss function for ML models with memory of past inputs that deterministically approximates the effect of many small, independent noise realizations added to the model input during training. We refer to this penalty and the resulting regularization as Linearized Multi-Noise Training (LMNT). We systematically examine the effect of LMNT, input noise, and other established regularization techniques in a case study using reservoir computing, a machine learning method using recurrent neural networks, to predict the spatiotemporal chaotic Kuramoto-Sivashinsky equation. We find that reservoir computers trained with noise or with LMNT produce climate predictions that appear to be indefinitely stable and have a climate very similar to the true system, while the short-term forecasts are substantially more accurate than those trained with other regularization techniques. Finally, we show the deterministic aspect of our LMNT regularization facilitates fast reservoir computer regularization hyperparameter tuning.

Authors

  • Alexander Wikner
    Department of Physics, University of Maryland, 4150 Campus Dr, 20742, College Park, United States. Electronic address: awikner1@umd.edu.
  • Joseph Harvey
    Hillsdale College, 33 E College St, 49242, Hillsdale, United States.
  • Michelle Girvan
    Institute for Research in Electronics and Applied Physics, University of Maryland, College Park, Maryland 20742, USA.
  • Brian R Hunt
    Institute for Physical Science and Technology, University of Maryland, College Park, Maryland 20742, USA.
  • Andrew Pomerance
    Potomac Research LLC, 801 N Pitt St, 22341, Alexandria, United States.
  • Thomas Antonsen
    University of Maryland, College Park, Maryland 20742, USA.
  • Edward Ott
    Institute for Research in Electronics and Applied Physics, University of Maryland, College Park, Maryland 20742, USA.