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Interpolation models with multiple hyperparameters
Authors:DAVID J C MACKAY  RYO TAKEUCHI
Institution:(1) Cavendish Laboratory, Madingley Road, Cambridge, CB3 OHE, UK email;(2) Department of Electrical Engineering, Waseda University, 3-4-1 Ohkubo, Shinjuku, Tokyo, 169, Japan email
Abstract:A traditional interpolation model is characterized by the choice of regularizer applied to the interpolant, and the choice of noise model. Typically, the regularizer has a single regularization constant agr, and the noise model has a single parameter beta. The ratio agr/beta alone is responsible for determining globally all these attributes of the interpolant: its lsquocomplexityrsquo, lsquoflexibilityrsquo, lsquosmoothnessrsquo, lsquocharacteristic scale lengthrsquo, and lsquocharacteristic amplitudersquo. We suggest that interpolation models should be able to capture more than just one flavour of simplicity and complexity. We describe Bayesian models in which the interpolant has a smoothness that varies spatially. We emphasize the importance, in practical implementation, of the concept of lsquoconditional convexityrsquo when designing models with many hyperparameters. We apply the new models to the interpolation of neuronal spike data and demonstrate a substantial improvement in generalization error.
Keywords:Bayesian inference  convexity  regression  regularizer  spline  neuronal spike
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