Abstract
Fixed-basis and variable-basis approximation schemes are compared for the problems of function approximation and functional optimization (also known as infinite programming). Classes of problems are investigated for which variable-basis schemes with sigmoidal computational units perform better than fixed-basis ones, in terms of the minimum number of computational units needed to achieve a desired error in function approximation or approximate optimization. Previously known bounds on the accuracy are extended, with better rates, to families of -variable functions whose actual dependence is on a subset of variables, where the indices of these variables are not known a priori.
Citation
Giorgio Gnecco. "A Comparison between Fixed-Basis and Variable-Basis Schemes for Function Approximation and Functional Optimization." J. Appl. Math. 2012 1 - 17, 2012. https://doi.org/10.1155/2012/806945
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