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We focus on an interpretation of Gaussian radial basis functions (GRBF) which motivates extensions and learning strategies. Specifically, we show that GRBF regression equations naturally result from representing the input-output joint probability density function by a finite mixture of Gaussian. Corollaries of this interpretation are: some special forms of GRBF representations can be traced back to the type of Gaussian mixture used; previously proposed learning methods based on input-output clustering have a new learning; and estimation techniques for finite mixtures (namely the EM algorithm and model selection criteria) can be invoked to learn GRBF regression equations.
Mário A. T. Figueiredo (Mon,) studied this question.