Introduction to Radial Basis Function Networks

نویسنده

  • Mark J L Orr
چکیده

This document is an introduction to radial basis function RBF networks a type of arti cial neural network for application to problems of supervised learning e g regression classi cation and time series prediction It is now only available in PostScript an older and now unsupported hyper text ver sion may be available for a while longer The document was rst published in along with a package of Matlab functions implementing the methods described In a new document Recent Advances in Radial Basis Function Networks became available with a second and improved version of the Matlab package mjo anc ed ac uk www anc ed ac uk mjo papers intro ps www anc ed ac uk mjo intro intro html www anc ed ac uk mjo software rbf zip www anc ed ac uk mjo papers recad ps www anc ed ac uk mjo software rbf zip

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تاریخ انتشار 1996