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MACD-Histogram-based Fully Convolutional Neural Networks for Classifying Time Series

机译:基于MACD直方图的全卷积神经网络对时间序列进行分类

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With the widespread use of sensor devices, time series data have become ubiquitous. Therefore, many academic researchers and industrial practitioners have been conducting the development of analysis methods for time series. In particular, time series classification is one of the common tasks for time series analysis. Time series classification predicts the class label of a time series not having its class label. In the era of Internet of things (IoT), developing new models for classifying time series is a well-known grand challenge because time series classification is the most difficult problem in time series analysis and it covers many different application domains in IoT. This paper focuses on time series classifiers that employ deep learning techniques for univariate time series classification. Fully convolutional neural network (FCN) and hybrid models based on FCN are the most successful deep neural networks. In this paper, a new FCN-based model using the moving average convergence divergence (MACD) histogram is proposed. The MACD histogram can capture local features of the time series. In this study, our new model uses the MACD histogram, where the input of our proposed model is the MACD histogram. Moreover, to enhance the representation of an input layer representation, multi-channel input for the FCN model is proposed. In the multi-channel input, both values of a time series and the MACD histogram of the time series are input to the FCN model. Experiments were conducted using an actual time series benchmark datasets, which is the UCR Time Series Classification Archive with 85 different types of time series datasets. The experimental results show that the classification performance of the proposed model outperforms not only FCN but also FCN-LSTM.
机译:随着传感器设备的广泛使用,时间序列数据已无处不在。因此,许多学术研究人员和工业从业人员一直在进行时间序列分析方法的开发。特别地,时间序列分类是时间序列分析的常见任务之一。时间序列分类可预测没有其类别标签的时间序列的类别标签。在物联网(IoT)时代,开发新的时间序列分类模型是一项众所周知的重大挑战,因为时间序列分类是时间序列分析中最困难的问题,它涵盖了IoT中的许多不同应用领域。本文重点介绍采用深度学习技术进行单变量时间序列分类的时间序列分类器。完全卷积神经网络(FCN)和基于FCN的混合模型是最成功的深度神经网络。本文提出了一种新的基于FCN的移动平均会聚散度(MACD)直方图模型。 MACD直方图可以捕获时间序列的局部特征。在这项研究中,我们的新模型使用MACD直方图,其中我们提出的模型的输入是MACD直方图。此外,为了增强输入层表示的表示,提出了用于FCN模型的多通道输入。在多通道输入中,时间序列的值和时间序列的MACD直方图都输入到FCN模型。使用实际的时间序列基准数据集进行了实验,该数据集是具有85种不同类型的时间序列数据集的UCR时间序列分类存档。实验结果表明,该模型的分类性能不仅优于FCN,而且优于FCN-LSTM。

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