Author:
Wang Junlu,Li Su,Ji Wanting,Jiang Tian,Song Baoyan
Abstract
AbstractTime series classification is a basic task in the field of streaming data event analysis and data mining. The existing time series classification methods have the problems of low classification accuracy and low efficiency. To solve these problems, this paper proposes a T-CNN time series classification method based on a Gram matrix. Specifically, we perform wavelet threshold denoising on time series to filter normal curve noise, and propose a lossless transformation method based on the Gram matrix, which converts the time series to the time domain image and retains all the information of events. Then, we propose an improved CNN time series classification method, which introduces the Toeplitz convolution kernel matrix into convolution layer calculation. Finally, we introduce a Triplet network to calculate the similarity between similar events and different classes of events, and optimize the squared loss function of CNN. The proposed T-CNN model can accelerate the convergence rate of gradient descent and improve classification accuracy. Experimental results show that, compared with the existing methods, our T-CNN time series classification method has great advantages in efficiency and accuracy.
Funder
the National Key R&D Program of China
the National Natural Science Foundation of China
the Central Government Guides Local Science and Technology Development Foundation Project of Liaoning Province
the Scientific Research Project of the Educational Department of Liaoning Province
the Natural Science Foundation of Liaoning Province of China in 2022
the Major Science and Technology Plan of Liaoning Province of China in 2022
Publisher
Springer Science and Business Media LLC
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