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Published August 2024 | Published
Journal Article

Bridging Algorithmic Information Theory and Machine Learning: A new approach to kernel learning

  • 1. ROR icon California Institute of Technology

Abstract

Machine Learning (ML) and Algorithmic Information Theory (AIT) look at Complexity from different points of view. We explore the interface between AIT and Kernel Methods (that are prevalent in ML) by adopting an AIT perspective on the problem of learning kernels from data, in kernel ridge regression, through the method of Sparse Kernel Flows. In particular, by looking at the differences and commonalities between Minimal Description Length (MDL) and Regularization in Machine Learning (RML), we prove that the method of Sparse Kernel Flows is the natural approach to adopt to learn kernels from data. This approach aligns naturally with the MDL principle, offering a more robust theoretical basis than the existing reliance on cross-validation. The study reveals that deriving Sparse Kernel Flows does not require a statistical approach; instead, one can directly engage with code-lengths and complexities, concepts central to AIT. Thereby, this approach opens the door to reformulating algorithms in machine learning using tools from AIT, with the aim of providing them a more solid theoretical foundation.

    Copyright and License

    © 2024 Elsevier.

    Acknowledgement

    BH and HO acknowledge support from the Jet Propulsion Laboratory, California Institute of Technology , under a contract with the National Aeronautics and Space Administration and from Beyond Limits (Learning Optimal Models) through CAST (The Caltech Center for Autonomous Systems and Technologies).

    Contributions

    Boumediene Hamzi: Conceptualization, Investigation, Methodology. Marcus Hutter: Conceptualization, Investigation, Methodology. Houman Owhadi: Conceptualization, Funding acquisition, Investigation, Methodology.

    Data Availability

    No data was used for the research described in the article.

    Conflict of Interest

    No conflict of interest.

    Additional details

    Created:
    May 30, 2024
    Modified:
    May 30, 2024