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Minimax Optimal Kernel Operator Learning via Multilevel Training

Author

Listed:
  • Jikai Jin
  • Yiping Lu
  • Jose Blanchet
  • Lexing Ying

Abstract

Learning mappings between infinite-dimensional function spaces has achieved empirical success in many disciplines of machine learning, including generative modeling, functional data analysis, causal inference, and multi-agent reinforcement learning. In this paper, we study the statistical limit of learning a Hilbert-Schmidt operator between two infinite-dimensional Sobolev reproducing kernel Hilbert spaces. We establish the information-theoretic lower bound in terms of the Sobolev Hilbert-Schmidt norm and show that a regularization that learns the spectral components below the bias contour and ignores the ones that are above the variance contour can achieve the optimal learning rate. At the same time, the spectral components between the bias and variance contours give us flexibility in designing computationally feasible machine learning algorithms. Based on this observation, we develop a multilevel kernel operator learning algorithm that is optimal when learning linear operators between infinite-dimensional function spaces.

Suggested Citation

  • Jikai Jin & Yiping Lu & Jose Blanchet & Lexing Ying, 2022. "Minimax Optimal Kernel Operator Learning via Multilevel Training," Papers 2209.14430, arXiv.org, revised Jul 2023.
  • Handle: RePEc:arx:papers:2209.14430
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    References listed on IDEAS

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    3. Justin Sirignano & Konstantinos Spiliopoulos, 2017. "DGM: A deep learning algorithm for solving partial differential equations," Papers 1708.07469, arXiv.org, revised Sep 2018.
    4. Chang-Han Rhee & Peter W. Glynn, 2015. "Unbiased Estimation with Square Root Convergence for SDE Models," Operations Research, INFORMS, vol. 63(5), pages 1026-1043, October.
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