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- Title
多元时序的深度自编码器聚类算法.
- Authors
梓靖; 张建勋; 全文君; 南海
- Abstract
Aiming at the problem of insufficient feature extraction ability of deep clustering algorithm on multivariate time series data( MTS), This paper proposes a new deep clustering structure model (MDTC. In order to extract the key features of MTS and realize dimensionality reduction, one-dimensional convolution learns the attribute and temporal dimension feature representation of MTS and the autoencoder structure composed of network layers such as recurrent neural network; To improve the model’s ability to represent temporal features, this paper proposes MCBAM temporal attention module, which is used to enhance the representation features of different time periods in the MTS sequence. This paper conducts experiments on nine publicly available UEA multivariate time series datasets, compared with other autoencoders, the autoencoder structure of the model improves by 2%-9% on 7 data sets; Compared with other attention modules, the MCBAM module of the model improves by 0.3%-2% on the six datasets. Experiments show the effectiveness of the MDTC model structure and MCBAM module, and the model has excellent performance compared with other clustering algorithms.
- Subjects
TIME series analysis; RECURRENT neural networks; FEATURE extraction; DEEP learning; ALGORITHMS
- Publication
Application Research of Computers / Jisuanji Yingyong Yanjiu, 2023, Vol 40, Issue 8, p2387
- ISSN
1001-3695
- Publication type
Article
- DOI
10.19734/j.issn.1001-3695.2022.11.0635