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Neural network representation and learning of mappings and their derivativesDiscussed here are recent theorems proving that artificial neural networks are capable of approximating an arbitrary mapping and its derivatives as accurately as desired. This fact forms the basis for further results establishing the learnability of the desired approximations, using results from non-parametric statistics. These results have potential applications in robotics, chaotic dynamics, control, and sensitivity analysis. An example involving learning the transfer function and its derivatives for a chaotic map is discussed.
Document ID
19910012467
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
White, Halbert
(California Univ. San Diego, CA, United States)
Hornik, Kurt
(California Univ. San Diego, CA, United States)
Stinchcombe, Maxwell
(California Univ. San Diego, CA, United States)
Gallant, A. Ronald
(California Univ. San Diego, CA, United States)
Date Acquired
September 6, 2013
Publication Date
February 1, 1991
Publication Information
Publication: NASA, Lyndon B. Johnson Space Center, Proceedings of the 2nd Joint Technology Workshop on Neural Networks and Fuzzy Logic, Volume 1
Subject Category
Cybernetics
Accession Number
91N21780
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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