ITERATIVE SOLUTION TO APPROXIMATION IN REPRODUCING KERNEL HILBERT SPACES
Tony J. Dodd and Robert F. Harrison
Department of Automatic Control and Systems Engineering University of Sheffield, Sheffield S1 3JD, UK e-mail: {t.j.dodd,r.f.harrison}@shef.ac.uk
A general framework for function approximation from finite data is presented based on reproducing kernel Hilbert spaces. Key results are summarised and the normal and regularised solutions are described. A potential limitation to these solutions for large data sets is the computational burden. An iterative approach to the least-squares normal solution is proposed to overcome this. Detailed proofs of convergence are given.
Keywords: Hilbert spaces, system identification, function approximation, Gaussian processes, iterative methods, least-squares approximation, regularisation
Session slot T-Th-A01: Identification of Nonlinear Systems II/Area code 3a : Modelling, Identification and Signal Processing

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