Report SYCON-88-02 SOME REMARKS ON THE BACKPROPOGATION ALGORITHM FOR NEURAL NET LEARNING

نویسنده

  • Eduardo D. Sontag
چکیده

This report contains some remarks about the backpropagation method for neural net learning. We concentrate in particular in the study of local minima of error functions and the growth of weights during learning. Rutgers Center for Systems and Control, 1988

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تاریخ انتشار 1988