A Sequential Learning Approach for Single Hidden Layer Neural Networks

 ZHANG Jie
 Centre for Process Analysis, Chemometrics and Control Department of Chemical and Process Engineering, University of Newcastle upon Tyne

 MORRIS A. J.
 Centre for Process Analysis, Chemometrics and Control Department of Chemical and Process Engineering, University of Newcastle upon Tyne
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Author(s)

 ZHANG Jie
 Centre for Process Analysis, Chemometrics and Control Department of Chemical and Process Engineering, University of Newcastle upon Tyne

 MORRIS A. J.
 Centre for Process Analysis, Chemometrics and Control Department of Chemical and Process Engineering, University of Newcastle upon Tyne
Journal

 Neural networks : the official journal of the International Neural Network Society

Neural networks : the official journal of the International Neural Network Society 11(1), 6580, 19980101
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