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Comments on 'Constructive learning of recurrent neural networks: limitations of recurrent cascade correlation and a simple solution'

机译:关于“递归神经网络的建设性学习:递归级联相关性的局限性和简单解决方案”的评论

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摘要

Giles et al. (1995) have proven that Fahlman's recurrent cascade correlation (RCC) architecture is not capable of realizing finite state automata that have state-cycles of length more than two under a constant input signal. This paper extends the conclusions of Giles et al. by showing that there exists a corollary to their original proof which identifies a large second class of automata, that is also unrepresentable by RCC.
机译:吉尔斯等。 (1995年)证明了Fahlman的递归级联相关(RCC)体系结构无法实现在恒定输入信号下状态周期长度大于2的有限状态自动机。本文扩展了Giles等人的结论。通过证明存在原始证据的推论,该推论确定了第二大类自动机,这也是RCC无法代表的。

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