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Gaussian RBF Centered Kernel Alignment (CKA) in the Large-Bandwidth Limit

Sergio A. Álvarez

2022IEEE Transactions on Pattern Analysis and Machine Intelligence15 citationsDOI

Abstract

Centered kernel alignment (CKA), also known as centered kernel-target alignment, is useful as a similarity measure between kernels and as a kernel-based similarity measure between feature representations. We prove that CKA based on a Gaussian RBF kernel converges to linear CKA in the large-bandwidth limit. The result relies on mean-centering of the feature maps and on a Hilbert-Schmidt Independence Criterion (HSIC) identity. We show that convergence onset is sensitive to the geometry of the feature representations, and that a notion of representation eccentricity, ρ, constrains the bandwidth range for which Gaussian CKA can differ noticeably from linear CKA. Our experimental results suggest that Gaussian bandwidths less than ρ should be selected in order to enable nonlinear modeling.

Topics & Concepts

GaussianMathematicsGaussian functionKernel (algebra)Pattern recognition (psychology)Bandwidth (computing)Similarity measureArtificial intelligenceKernel methodAlgorithmComputer scienceDiscrete mathematicsSupport vector machinePhysicsTelecommunicationsQuantum mechanicsFace and Expression RecognitionDomain Adaptation and Few-Shot LearningNeural Networks and Applications
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