A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification
Imbalanced time-series classification (ITSC) is ubiquitous in many real-world applications. In this study, a novel cost-sensitive deep learning framework, namely ACS-ATCN, is proposed for ITSC. With the framework of ACS-ATCN, first, weighted class costs are optimized jointly with the hyperparameters...
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sg-ntu-dr.10356-1646782023-02-08T06:57:15Z A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification Zhang, Xiaocai Peng, Hui Zhang, Jianjia Wang, Yang School of Biological Sciences Science::Biological sciences Imbalanced Time-Series Classification Imbalanced time-series classification (ITSC) is ubiquitous in many real-world applications. In this study, a novel cost-sensitive deep learning framework, namely ACS-ATCN, is proposed for ITSC. With the framework of ACS-ATCN, first, weighted class costs are optimized jointly with the hyperparameters of an attention temporal convolutional network (ATCN). Second, an improved evolutionary algorithm, termed adaptive top-k differential evolution (ATDE), is presented for optimizing class costs as well as the network's hyperparameter. Experiments on five data sets demonstrate that ACS-ATCN achieves a higher average G-mean than other cost-sensitive learning and oversampling algorithms while using much less computational time. Comparison between different deep learning frameworks also confirms its advantages over other existing benchmarking methods in ITSC. Experimental results also reveal that ATDE provides more accurate classification than the vanilla DE algorithm, and saves as high as 41.53% of average computational expense for convergence. This work was supported in part by National Natural Science Foundation of China (grant number 62101611) and Natural Science Foundation of Guangdong Province (grant number 2022A1515011375). 2023-02-08T06:57:15Z 2023-02-08T06:57:15Z 2023 Journal Article Zhang, X., Peng, H., Zhang, J. & Wang, Y. (2023). A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification. Expert Systems With Applications, 213, 119073-. https://dx.doi.org/10.1016/j.eswa.2022.119073 0957-4174 https://hdl.handle.net/10356/164678 10.1016/j.eswa.2022.119073 2-s2.0-85140923444 213 119073 en Expert Systems with Applications © 2022 Elsevier Ltd. All rights reserved. |
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Science::Biological sciences Imbalanced Time-Series Classification Zhang, Xiaocai Peng, Hui Zhang, Jianjia Wang, Yang A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
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Imbalanced time-series classification (ITSC) is ubiquitous in many real-world applications. In this study, a novel cost-sensitive deep learning framework, namely ACS-ATCN, is proposed for ITSC. With the framework of ACS-ATCN, first, weighted class costs are optimized jointly with the hyperparameters of an attention temporal convolutional network (ATCN). Second, an improved evolutionary algorithm, termed adaptive top-k differential evolution (ATDE), is presented for optimizing class costs as well as the network's hyperparameter. Experiments on five data sets demonstrate that ACS-ATCN achieves a higher average G-mean than other cost-sensitive learning and oversampling algorithms while using much less computational time. Comparison between different deep learning frameworks also confirms its advantages over other existing benchmarking methods in ITSC. Experimental results also reveal that ATDE provides more accurate classification than the vanilla DE algorithm, and saves as high as 41.53% of average computational expense for convergence. |
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School of Biological Sciences |
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School of Biological Sciences Zhang, Xiaocai Peng, Hui Zhang, Jianjia Wang, Yang |
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Article |
author |
Zhang, Xiaocai Peng, Hui Zhang, Jianjia Wang, Yang |
author_sort |
Zhang, Xiaocai |
title |
A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
title_short |
A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
title_full |
A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
title_fullStr |
A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
title_full_unstemmed |
A cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
title_sort |
cost-sensitive attention temporal convolutional network based on adaptive top-k differential evolution for imbalanced time-series classification |
publishDate |
2023 |
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https://hdl.handle.net/10356/164678 |
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1759058765868433408 |