A new algorithm for learning in piecewiselinear neural networks

 GAD E. F.
 Department of Electrical Engineering, Carleton University

 ATIYA A. F.
 Department of Electrical Engineering

 SHAHEEN S.
 Department of Computer Engineering, Cairo University

 ElDESSOUKI A.
 Informatics Research Institute, MCSRTA
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Author(s)

 GAD E. F.
 Department of Electrical Engineering, Carleton University

 ATIYA A. F.
 Department of Electrical Engineering

 SHAHEEN S.
 Department of Computer Engineering, Cairo University

 ElDESSOUKI A.
 Informatics Research Institute, MCSRTA
Journal

 Neural Networks

Neural Networks 13(4), 485505, 20000501
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