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L^p(K)Approximation Problems in System Identification with RBF Neural Networks

L^p(K)Approximation Problems in System Identification with RBF Neural Networks
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摘要 L^p approximation problems in system identification with RBF neural networks are investigated. It is proved that by superpositions of some functions of one variable in L^ploc(R), one can approximate continuous functionals defined on a compact subset of L^P(K) and continuous operators from a compact subset of L^p1 (K1) to a compact subset of L^p2 (K2). These results show that if its activation function is in L^ploc(R) and is not an even polynomial, then this RBF neural networks can approximate the above systems with any accuracy. L^p approximation problems in system identification with RBF neural networks are investigated. It is proved that by superpositions of some functions of one variable in L^ploc(R), one can approximate continuous functionals defined on a compact subset of L^P(K) and continuous operators from a compact subset of L^p1 (K1) to a compact subset of L^p2 (K2). These results show that if its activation function is in L^ploc(R) and is not an even polynomial, then this RBF neural networks can approximate the above systems with any accuracy.
出处 《Journal of Mathematical Research and Exposition》 CSCD 2009年第1期124-128,共5页 数学研究与评论(英文版)
基金 Foundation item: tile National Natural Science Foundation of China (No. 10471017).
关键词 RBF neural networks system identification LP-approximation continuous functionals and operators. RBF neural networks system identification LP-approximation continuous functionals and operators.
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