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Generalization bounds for function approximation from scattered noisy data
Authors:Partha Niyogi  Federico Girosi
Institution:(1) Artificial Intelligence Laboratory, Massachusetts Institute of Technology, 545 Technology Square, Cambridge, MA 02141, USA;(2) Center for Biological and Computational Learning, Massachusetts Institute of Technology, 45 Carleton Street, E25-201, Cambridge, MA 02141, USA
Abstract:We consider the problem of approximating functions from scattered data using linear superpositions of non-linearly parameterized functions. We show how the total error (generalization error) can be decomposed into two parts: an approximation part that is due to the finite number of parameters of the approximation scheme used; and an estimation part that is due to the finite number of data available. We bound each of these two parts under certain assumptions and prove a general bound for a class of approximation schemes that include radial basis functions and multilayer perceptrons. This revised version was published online in June 2006 with corrections to the Cover Date.
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