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Erschienen in: The Journal of Supercomputing 7/2021

04.01.2021

Bidirectional LSTM-RNN-based hybrid deep learning frameworks for univariate time series classification

verfasst von: Mehak Khan, Hongzhi Wang, Adnan Riaz, Aya Elfatyany, Sajida Karim

Erschienen in: The Journal of Supercomputing | Ausgabe 7/2021

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Abstract

Time series classification (TSC) has been around for recent decades as a significant research problem for industry practitioners as well as academic researchers. Due to the rapid increase in temporal data in a wide range of disciplines, an incredible amount of algorithms have been proposed. This paper proposes robust approaches based on state-of-the-art techniques, bidirectional long short-term memory (BiLSTM), fully convolutional network (FCN), and attention mechanism. A BiLSTM considers both forward and backward dependencies, and FCN is proven to be good at feature extraction as a TSC baseline. Therefore, we augment BiLSTM and FCN in a hybrid deep learning architecture, BiLSTM-FCN. Moreover, we similarly explore the use of the attention mechanism to check its efficiency on BiLSTM-FCN and propose another model ABiLSTM-FCN. We validate the performance on 85 datasets from the University of California Riverside (UCR) univariate time series archive. The proposed models are evaluated in terms of classification testing error and f1-score and also provide performance comparison with various existing state-of-the-art techniques. The experimental results show that our proposed models perform comprehensively better than the existing state-of-the-art methods and baselines.

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Metadaten
Titel
Bidirectional LSTM-RNN-based hybrid deep learning frameworks for univariate time series classification
verfasst von
Mehak Khan
Hongzhi Wang
Adnan Riaz
Aya Elfatyany
Sajida Karim
Publikationsdatum
04.01.2021
Verlag
Springer US
Erschienen in
The Journal of Supercomputing / Ausgabe 7/2021
Print ISSN: 0920-8542
Elektronische ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-020-03560-z

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