Regularisation of RBF - Networks with theBayesian Evidence
نویسندگان
چکیده
We propose a novel regularisation method for Gaussian mixture networks, which adopts a Bayesian approach and draws on the evidence scheme to optimise the hyper-parameters. This leads to a new, modiied form of the EM algorithm, which is compared with the original scheme on three clas-siication problems.
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