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Second-Order Learning Methods for a Multilayer Perceptron

机译:多层感知器的二阶学习方法

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First- and second-order learning methods for feed-forward multilayer neural networks are studied. Newton-type and quasi-Newton algorithms are considered and compared with commonly used back-propagation algorithm. It is shown that, although second-order algorithms require enhanced computer facilities, they provide better convergence and simplicity in usage. 13 refs., 2 figs., 2 tabs. (Atomindex citation 26:042591)

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