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Pattern Recognition in Sequences Using Multistate Sequence Autoencoding Neural Networks

机译:使用多状态序列自动编码神经网络的序列模式识别

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In the paper, we describe the Multistate Sequence Autoencoding Neural Networks (MSANNs) that enable us to deal with some problems concerning pattern recognition in sequential data. The properties of the MSANN networks proposed by us make these networks suitable for use in the following situations: patterns appear only partially, patterns are in different orders, patterns are stretched over time, etc. The training and testing procedures for the MSANN networks are presented in the paper.
机译:在本文中,我们描述了多状态序列自动编码神经网络(MSANN),它使我们能够处理一些有关顺序数据中模式识别的问题。我们提出的MSANN网络的属性使这些网络适用于以下情况:模式仅部分出现,模式以不同顺序排列,模式随着时间的推移而伸展等。介绍了MSANN网络的训练和测试过程在本文中。

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