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Published in: The Journal of Supercomputing 7/2021

04-01-2021

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

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

Published in: The Journal of Supercomputing | Issue 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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Metadata
Title
Bidirectional LSTM-RNN-based hybrid deep learning frameworks for univariate time series classification
Authors
Mehak Khan
Hongzhi Wang
Adnan Riaz
Aya Elfatyany
Sajida Karim
Publication date
04-01-2021
Publisher
Springer US
Published in
The Journal of Supercomputing / Issue 7/2021
Print ISSN: 0920-8542
Electronic ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-020-03560-z

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