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A deep learning framework for time series classification using Relative Position Matrix and Convolutional Neural Network

机译:使用相对位置矩阵和卷积神经网络的时间序列分类的深度学习框架

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Time series classification (TSC) which has attracted great attention in time series data mining task, has already applied to various fields. With the rapid development of Convolutional Neural Network (CNN), the CNN based methods on TSC have begun to emerge until recently. However, the performance of CNN based methods is slightly worse than state-of-the-art traditional methods. Therefore, we propose a novel deep learning framework using Relative Position Matrix and Convolutional Neural Network (RPMCNN) for the TSC task. We investigate a time series data representation method called Relative Position Matrix (RPM) to convert the raw time series data to 2D images which enable the use of techniques from image recognition. We also construct an improved CNN architecture to automatically learn a high-level abstract representation of low-level raw time series data. Therefore, the combination of RPM and CNN in a unified framework is expected to boost the accuracy and generalization ability of TSC. We conduct a comprehensive evaluation with various existing methods on a large number of standard datasets and demonstrate that our approach achieves remarkable results and outperforms the current best TSC approaches by a large margin. (C) 2019 Elsevier B.V. All rights reserved.
机译:时间序列分类(TSC)在时间序列数据挖掘任务中引起了极大的关注,已经应用于各个领域。随着卷积神经网络(CNN)的快速发展,直到最近,基于TNN的基于CNN的方法才开始出现。但是,基于CNN的方法的性能比最先进的传统方法稍差。因此,我们为TSC任务提出了一种使用相对位置矩阵和卷积神经网络(RPMCNN)的新颖的深度学习框架。我们研究了一种称为相对位置矩阵(RPM)的时间序列数据表示方法,以将原始时间序列数据转换为2D图像,从而可以使用图像识别技术。我们还构造了一种改进的CNN架构,以自动学习低级原始时间序列数据的高级抽象表示。因此,将RPM和CNN组合在一个统一的框架中有望提高TSC的准确性和泛化能力。我们对大量标准数据集使用各种现有方法进行了全面评估,并证明了我们的方法取得了显著成果,并且在很大程度上领先于当前最好的TSC方法。 (C)2019 Elsevier B.V.保留所有权利。

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