Litcius/Paper detail

Kernel center adaptation in the reproducing kernel Hilbert space embedding method

Sai Tej Paruchuri, Jia Guo, Andrew J. Kurdila

2022International Journal of Adaptive Control and Signal Processing12 citationsDOI

Abstract

Summary The performance of adaptive estimators that employ embedding in reproducing kernel Hilbert spaces (RKHS) depends on the choice of the location of basis kernel centers. Parameter convergence and error approximation rates depend on where and how the kernel centers are distributed in the state‐space. In this article, we develop the theory that relates parameter convergence and approximation rates to the position of kernel centers. We develop criteria for choosing kernel centers in a specific class of systems by exploiting the fact that the state trajectory regularly visits the neighborhood of the positive limit set. Two algorithms, based on centroidal Voronoi tessellations and Kohonen self‐organizing maps, are derived to choose kernel centers in the RKHS embedding method. Finally, we implement these methods on two practical examples and test their effectiveness.

Topics & Concepts

Reproducing kernel Hilbert spaceKernel embedding of distributionsVariable kernel density estimationKernel (algebra)EmbeddingHilbert spaceMathematicsKernel principal component analysisKernel methodString kernelEstimatorPolynomial kernelRadial basis function kernelApplied mathematicsMathematical optimizationAlgorithmComputer scienceArtificial intelligenceDiscrete mathematicsMathematical analysisStatisticsSupport vector machineNeural Networks and ApplicationsControl Systems and IdentificationModel Reduction and Neural Networks