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作者机构:Istituto per i Circuiti Elettronici Consiglio Nationale delle Ricerche Genoa Italy
出 版 物:《IEEE TRANSACTIONS ON NEURAL NETWORKS》 (IEEE Trans Neural Networks)
年 卷 期:1997年第8卷第3期
页 面:623-629页
核心收录:
主 题:convergence theorems neural networks optimal learning perceptron algorithm pocket algorithm threshold neuron
摘 要:The problem of finding optimal weights for a single threshold neuron starting from a general training set is considered, Among the variety of possible learning techniques, the pocket algorithm has a proper convergence theorem which asserts its optimality. Unfortunately, the original proof ensures the asymptotic achievement of an optimal weight vector only if the inputs in the training set are integer or rational. This limitation is overcome in this paper by introducing a different approach that leads to the general result, Furthermore, a modified version of the learning method considered, called pocket algorithm with ratchet, is shown to obtain an optimal configuration within a finite number of iterations independently of the given training set.