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A comparative study of recurrent neural network architectures onlearning temporal sequences

机译:反复性神经网络架构上的颞序列序列的比较研究

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A recurrent neural networks with context units that can handle temporal sequences is proposed. We describe an architecture whose performance is better than the architectures proposed by Jordan and Elman respectively using error backpropagation learning algorithms. Three learning experiments were carried out. In the first experiment, we used the recurrent neural networks to simulate a finite state machine. In the second experiment, we use the recurrent networks to handle a combination retrieving problem. In the third experiment, we train the neural networks to recognize the periodicity in temporal sequence data. The results of three experiments showed that our system had a better performance
机译:提出了一种具有可以处理时间序列的上下文单元的经常性神经网络。我们描述了一种架构,其性能优于Jordan和Elman的架构,分别使用错误反向存储算法。进行了三个学习实验。在第一个实验中,我们使用了经常性神经网络来模拟有限状态机。在第二个实验中,我们使用经常性网络处理组合检索问题。在第三个实验中,我们训练神经网络以识别时间序列数据中的周期性。三个实验的结果表明,我们的系统具有更好的性能

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