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Globally convergent algorithms with local learning rates
Authors:Magoulas   G.D. Plagianakos   V.P. Vrahatis   M.N.
Affiliation:Dept. of Inf. Syst. and Comput., Brunel Univ., London.
Abstract:A novel generalized theoretical result is presented that underpins the development of globally convergent first-order batch training algorithms which employ local learning rates. This result allows us to equip algorithms of this class with a strategy for adapting the overall direction of search to a descent one. In this way, a decrease of the batch-error measure at each training iteration is ensured, and convergence of the sequence of weight iterates to a local minimizer of the batch error function is obtained from remote initial weights. The effectiveness of the theoretical result is illustrated in three application examples by comparing two well-known training algorithms with local learning rates to their globally convergent modifications.
Keywords:
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