Neural networks with a continuous squashing function in the output are universal approximators

 CASTRO J. L.
 Department of Computer Science and A.I., ETSI Informatica, University of Granada

 MANTAS C. J.
 Department of Computer Science and A.I., ETSI Informatica, University of Granada

 BENITEZ J. M.
 Department of Computer Science and A.I., ETSI Informatica, University of Granada
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Author(s)

 CASTRO J. L.
 Department of Computer Science and A.I., ETSI Informatica, University of Granada

 MANTAS C. J.
 Department of Computer Science and A.I., ETSI Informatica, University of Granada

 BENITEZ J. M.
 Department of Computer Science and A.I., ETSI Informatica, University of Granada
Journal

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

Neural networks : the official journal of the International Neural Network Society 13(6), 561563, 20000601
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