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Learning a trajectory using adjoint functions and teacher forcingA new methodology for faster supervised temporal learning in nonlinear neural networks is presented which builds upon the concept of adjoint operators to allow fast computation of the gradients of an error functional with respect to all parameters of the neural architecture, and exploits the concept of teacher forcing to incorporate information on the desired output into the activation dynamics. The importance of the initial or final time conditions for the adjoint equations is discussed. A new algorithm is presented in which the adjoint equations are solved simultaneously (i.e., forward in time) with the activation dynamics of the neural network. We also indicate how teacher forcing can be modulated in time as learning proceeds. The results obtained show that the learning time is reduced by one to two orders of magnitude with respect to previously published results, while trajectory tracking is significantly improved. The proposed methodology makes hardware implementation of temporal learning attractive for real-time applications.
Document ID
19930060940
Acquisition Source
Legacy CDMS
Document Type
Reprint (Version printed in journal)
Authors
Toomarian, Nikzad B.
(JPL Pasadena, CA, United States)
Barhen, Jacob
(JPL; California Inst. of Technology Pasadena, United States)
Date Acquired
August 16, 2013
Publication Date
January 1, 1992
Publication Information
Publication: Neural Networks
ISSN: 0893-6080
Subject Category
Cybernetics
Accession Number
93A44937
Distribution Limits
Public
Copyright
Other

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