ArXiv TLDR

Adaptive Kernel Selection for Kernelized Diffusion Maps

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2604.18402

Othmane Aboussaad, Adam Miraoui, Boumediene Hamzi, Houman Owhadi

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TLDR

This paper introduces two adaptive kernel selection methods for Kernelized Diffusion Maps, improving accuracy and stability in spectral analysis.

Key contributions

  • Develops a variational outer loop to learn continuous kernel parameters for KDM, optimizing eigenvalues and orthonormality.
  • Proposes unsupervised cross-validation for kernel selection using an eigenvalue-sum criterion and random Fourier features.
  • Provides theoretical proofs for KDM operator dependence on kernel weights and cross-validation selector consistency.

Why it matters

Kernel selection is crucial for Kernelized Diffusion Maps. This paper offers two novel, theoretically-backed methods—a variational loop and unsupervised cross-validation—to adaptively choose kernels. This significantly enhances KDM's accuracy and stability.

Original Abstract

Selecting an appropriate kernel is a central challenge in kernel-based spectral methods. In \emph{Kernelized Diffusion Maps} (KDM), the kernel determines the accuracy of the RKHS estimator of a diffusion-type operator and hence the quality and stability of the recovered eigenfunctions. We introduce two complementary approaches to adaptive kernel selection for KDM. First, we develop a variational outer loop that learns continuous kernel parameters, including bandwidths and mixture weights, by differentiating through the Cholesky-reduced KDM eigenproblem with an objective combining eigenvalue maximization, subspace orthonormality, and RKHS regularization. Second, we propose an unsupervised cross-validation pipeline that selects kernel families and bandwidths using an eigenvalue-sum criterion together with random Fourier features for scalability. Both methods share a common theoretical foundation: we prove Lipschitz dependence of KDM operators on kernel weights, continuity of spectral projectors under a gap condition, a residual-control theorem certifying proximity to the target eigenspace, and exponential consistency of the cross-validation selector over a finite kernel dictionary.

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