TL;DR
This paper demonstrates that derivatives of kernel functions can be explicitly computed and interpreted, enhancing understanding of complex kernel methods applied to Earth system sciences.
Contribution
It provides explicit formulas for derivatives of common kernel functions and shows how these derivatives improve interpretability of kernel methods in Earth sciences.
Findings
Derivatives of kernel functions are proportional to kernel function derivatives.
Explicit formulas for first and second derivatives of common kernels are provided.
Derivatives can be used to interpret kernel methods in Earth system data analysis.
Abstract
Kernel methods are powerful machine learning techniques which implement generic non-linear functions to solve complex tasks in a simple way. They Have a solid mathematical background and exhibit excellent performance in practice. However, kernel machines are still considered black-box models as the feature mapping is not directly accessible and 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 is 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 many different problems. We note that model function derivatives in kernel machines is proportional to the kernel function derivative. We provide the explicit analytic form of the first and second derivatives of the most common…
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