Approximation by superposition of sigmoidal and radial basis functions

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Publication:1201935

DOI10.1016/0196-8858(92)90016-PzbMath0763.41015MaRDI QIDQ1201935

Charles A. Micchelli, Hrushikesh N. Mhaskar

Publication date: 17 January 1993

Published in: Advances in Applied Mathematics (Search for Journal in Brave)




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