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Published June 16, 2021 | Published + Submitted
Journal Article Open

Kernel Analog Forecasting: Multiscale Test Problems

Abstract

Data-driven prediction is becoming increasingly widespread as the volume of data available grows and as algorithmic development matches this growth. The nature of the predictions made and the manner in which they should be interpreted depend crucially on the extent to which the variables chosen for prediction are Markovian or approximately Markovian. Multiscale systems provide a framework in which this issue can be analyzed. In this work kernel analog forecasting methods are studied from the perspective of data generated by multiscale dynamical systems. The problems chosen exhibit a variety of different Markovian closures, using both averaging and homogenization; furthermore, settings where scale separation is not present and the predicted variables are non-Markovian are also considered. The studies provide guidance for the interpretation of data-driven prediction methods when used in practice.

Additional Information

© 2021, Society for Industrial and Applied Mathematics. Received by the editors May 18, 2020; accepted for publication (in revised form) February 2, 2021; published electronically June 16, 2021. Funding: The first and fourth authors were supported by the generosity of Eric and Wendy Schmidt by recommendation of the Schmidt Futures program, by Earthrise Alliance, Mountain Philanthropies, the Paul G. Allen Family Foundation, and the National Science Foundation (NSF) (award AGS1835860). The second author is supported by NSF (awards 1842538 and DMS-1854383) and ONR (awards N00014-16-1-2649 and N00014-19-1-242). The third author is supported by the NSF Mathematical Sciences Postdoctoral Research Fellowship (award 1803663). The fourth author is also supported by NSF (award DMS-1818977) and by the Office of Naval Research (award N00014-17-1-2079). DG is grateful to the Department of Computing and Mathematical Sciences at the California Institute of Technology for hospitality and for providing a stimulating environment during a sabbatical where part of this work was completed.

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Submitted - 2005.06623.pdf

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Created:
August 20, 2023
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October 20, 2023