Asymptotic Convergence of Backpropagation: Numerical Experiments
Ahmad, Subutai, Tesauro, Gerald, He, Yu
–Neural Information Processing Systems
We have calculated, both analytically and in simulations, the rate of convergence at long times in the backpropagation learning algorithm fornetworks with and without hidden units. Our basic finding for units using the standard sigmoid transfer function is lit convergence of the error for large t, with at most logarithmic corrections fornetworks with hidden units. Other transfer functions may lead to a 8lower polynomial rate of convergence. Our analytic calculations were presented in (Tesauro, He & Ahamd, 1989). Here we focus in more detail on our empirical measurements of the convergence ratein numerical simulations, which confirm our analytic results.
Neural Information Processing Systems
Dec-31-1990