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Kernel methods and their derivatives: Concept and perspectives for the earth system sciences

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  • J Emmanuel Johnson
  • Valero Laparra
  • Adrián Pérez-Suay
  • Miguel D Mahecha
  • Gustau Camps-Valls

Abstract

Kernel methods are powerful machine learning techniques which use generic non-linear functions to solve complex tasks. They have a solid mathematical foundation and exhibit excellent performance in practice. However, kernel machines are still considered black-box models as the kernel feature mapping cannot be accessed directly thus making the kernels difficult to interpret. The aim of this work is to show that it is indeed possible to interpret the functions learned by various kernel methods as they can be intuitive despite their complexity. Specifically, we show that derivatives of these functions have a simple mathematical formulation, are easy to compute, and can be applied to various problems. The model function derivatives in kernel machines is proportional to the kernel function derivative and we provide the explicit analytic form of the first and second derivatives of the most common kernel functions with regard to the inputs as well as generic formulas to compute higher order derivatives. We use them to analyze the most used supervised and unsupervised kernel learning methods: Gaussian Processes for regression, Support Vector Machines for classification, Kernel Entropy Component Analysis for density estimation, and the Hilbert-Schmidt Independence Criterion for estimating the dependency between random variables. For all cases we expressed the derivative of the learned function as a linear combination of the kernel function derivative. Moreover we provide intuitive explanations through illustrative toy examples and show how these same kernel methods can be applied to applications in the context of spatio-temporal Earth system data cubes. This work reflects on the observation that function derivatives may play a crucial role in kernel methods analysis and understanding.

Suggested Citation

  • J Emmanuel Johnson & Valero Laparra & Adrián Pérez-Suay & Miguel D Mahecha & Gustau Camps-Valls, 2020. "Kernel methods and their derivatives: Concept and perspectives for the earth system sciences," PLOS ONE, Public Library of Science, vol. 15(10), pages 1-30, October.
  • Handle: RePEc:plo:pone00:0235885
    DOI: 10.1371/journal.pone.0235885
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    References listed on IDEAS

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    1. Devis Tuia & Gustau Camps-Valls, 2016. "Kernel Manifold Alignment for Domain Adaptation," PLOS ONE, Public Library of Science, vol. 11(2), pages 1-25, February.
    2. Giorgio Gnecco & Marcello Sanguineti, 2009. "Accuracy of suboptimal solutions to kernel principal component analysis," Computational Optimization and Applications, Springer, vol. 42(2), pages 265-287, March.
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    Cited by:

    1. Gong Chen & Hartmut Fricke & Ostap Okhrin & Judith Rosenow, 2022. "Importance of Weather Conditions in a Flight Corridor," Stats, MDPI, vol. 5(1), pages 1-27, March.

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