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Adaptive Learning Method of Recurrent Temporal Deep Belief Network to Analyze Time Series Data

机译:经常性时间深度信仰网络分析时间序列数据的自适应学习方法

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Deep Learning has the hierarchical network architecture to represent the complicated features of input patterns. Such architecture is well known to represent higher learning capability compared with some conventional models if the best set of parameters in the optimal network structure is found. We have been developing the adaptive learning method that can discover the optimal network structure in Deep Belief Network (DBN). The learning method can construct the network structure with the optimal number of hidden neurons in each Restricted Boltzmann Machine and with the optimal number of layers in the DBN during learning phase. The network structure of the learning method can be self-organized according to given input patterns of big data set. In this paper, we embed the adaptive learning method into the recurrent temporal RBM and the self-generated layer into DBN. In order to verify the effectiveness of our proposed method, the experimental results are higher classification capability than the conventional methods in this paper.
机译:深度学习具有分层网络架构,可以表示输入模式的复杂功能。如果找到了最佳网络结构中的最佳参数,则众所周知,与一些传统模型相比,这种架构是众所周知的。我们一直在开发自适应学习方法,可以发现深度信仰网络(DBN)中的最佳网络结构。学习方法可以用每个限制的Boltzmann机器中的隐藏神经元的最佳数量和DBN在学习阶段期间的最佳数量的层结构构建网络结构。根据大数据集的给定输入模式,可以自组织学习方法的网络结构。在本文中,我们将自适应学习方法嵌入到经常性时间RBM和自成的层中进入DBN。为了验证我们所提出的方法的有效性,实验结果比本文中的常规方法更高的分类能力。

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