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CNN-FCM: System modeling promotes stability of deep learning in time series prediction

机译:CNN-FCM:系统建模在时间序列预测中促进深度学习的稳定性

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Time series data are usually non-stationary and evolve over time. Even if deep learning has been found effective in dealing with sequential data, the stability of deep neural networks in coping with the situations unseen during the training stage is also important. This paper deals with this problem based on a fuzzy cognitive block (FCB) which embeds the learning of high-order fuzzy cognitive maps into the deep learning architecture. Thereafter, computers can automatically model the complex system that produces the observation rather than simply regress the available data. Respectively, we design a deep neural network termed CNN-FCM which has combined the available convolution network with FCB. To validate the advantages of our design and verify the effectiveness of FCB, twelve benchmark datasets are employed and classic deep learning architectures are introduced as the comparison. The experimental results show that the performance of many current popular deep learning architectures declines when handling data deviated from the training set. FCB plays an important role in promoting the performance of CNN-FCM in the corresponding experiments. Thereafter, we conclude that system modeling can promote the stability of deep learning in time series prediction. (C) 2020 Elsevier B.V. All rights reserved.
机译:时间序列数据通常是非静止的并且随着时间的推移而发展。即使在处理顺序数据方面发现深度学习,深神经网络在训练阶段在训练阶段看不见的情况下也是重要的。本文基于模糊认知块(FCB)对此问题讨论了嵌入了高阶模糊认知地图的学习进入深度学习架构。此后,计算机可以自动模拟生成观察的复杂系统,而不是简单地重新出现可用数据。我们分别设计了一个被称为CNN-FCM的深神经网络,它将可用的卷积网络与FCB组合。为了验证我们设计的优势并验证FCB的有效性,采用了12个基准数据集,并将经典的深度学习架构作为比较引入。实验结果表明,在处理截至训练集的数据时,许多当前流行的深度学习架构的性能下降。 FCB在促进相应实验中促进CNN-FCM的性能方面发挥着重要作用。此后,我们得出结论,系统建模可以促进时间序列预测中深度学习的稳定性。 (c)2020 Elsevier B.v.保留所有权利。

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