Time-sequential graph adversarial learning for brain modularity community detection
Brain community detection is an efficient method to represent the communities of brain networks. However, time-variable functions of the brain and the intricate brain community structure impose a great challenge on it. In this paper, a time-sequential graph adversarial learning (TGAL) framework is p...
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my.um.eprints.412642023-09-15T07:39:33Z http://eprints.um.edu.my/41264/ Time-sequential graph adversarial learning for brain modularity community detection Gong, Changwei Xue, Bing Jing, Changhong He, Chun-Hui Wu, Guo-Cheng Lei, Baiying Wang, Shuqiang QA Mathematics QA75 Electronic computers. Computer science Brain community detection is an efficient method to represent the communities of brain networks. However, time-variable functions of the brain and the intricate brain community structure impose a great challenge on it. In this paper, a time-sequential graph adversarial learning (TGAL) framework is proposed to detect brain communities and characterize the structure of communities from brain networks. In the framework, a novel time-sequential graph neural network is designed as an encoder to extract efficient graph representations by spatio-temporal attention mechanism. Since it is difficult to capture the community structure, the measurable modularity loss is used to optimize by maximizing the modularity of the community. In addition, the framework employs an adversarial scheme to guide the learning of representation. The effectiveness of our model is shown through experiments on the real-world brain network datasets, and the great performance of brain community detection demonstrates the advantage of the proposed framework. Aner Inst Mathematical Sciences-AIMS 2022 Article PeerReviewed Gong, Changwei and Xue, Bing and Jing, Changhong and He, Chun-Hui and Wu, Guo-Cheng and Lei, Baiying and Wang, Shuqiang (2022) Time-sequential graph adversarial learning for brain modularity community detection. Mathematical Biosciences and Engineering, 19 (12). pp. 13276-13293. ISSN 1547-1063, DOI https://doi.org/10.3934/mbe.2022621 <https://doi.org/10.3934/mbe.2022621>. 10.3934/mbe.2022621 |
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QA Mathematics QA75 Electronic computers. Computer science Gong, Changwei Xue, Bing Jing, Changhong He, Chun-Hui Wu, Guo-Cheng Lei, Baiying Wang, Shuqiang Time-sequential graph adversarial learning for brain modularity community detection |
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Brain community detection is an efficient method to represent the communities of brain networks. However, time-variable functions of the brain and the intricate brain community structure impose a great challenge on it. In this paper, a time-sequential graph adversarial learning (TGAL) framework is proposed to detect brain communities and characterize the structure of communities from brain networks. In the framework, a novel time-sequential graph neural network is designed as an encoder to extract efficient graph representations by spatio-temporal attention mechanism. Since it is difficult to capture the community structure, the measurable modularity loss is used to optimize by maximizing the modularity of the community. In addition, the framework employs an adversarial scheme to guide the learning of representation. The effectiveness of our model is shown through experiments on the real-world brain network datasets, and the great performance of brain community detection demonstrates the advantage of the proposed framework. |
format |
Article |
author |
Gong, Changwei Xue, Bing Jing, Changhong He, Chun-Hui Wu, Guo-Cheng Lei, Baiying Wang, Shuqiang |
author_facet |
Gong, Changwei Xue, Bing Jing, Changhong He, Chun-Hui Wu, Guo-Cheng Lei, Baiying Wang, Shuqiang |
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Gong, Changwei |
title |
Time-sequential graph adversarial learning for brain modularity community detection |
title_short |
Time-sequential graph adversarial learning for brain modularity community detection |
title_full |
Time-sequential graph adversarial learning for brain modularity community detection |
title_fullStr |
Time-sequential graph adversarial learning for brain modularity community detection |
title_full_unstemmed |
Time-sequential graph adversarial learning for brain modularity community detection |
title_sort |
time-sequential graph adversarial learning for brain modularity community detection |
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Aner Inst Mathematical Sciences-AIMS |
publishDate |
2022 |
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http://eprints.um.edu.my/41264/ |
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1778161649231855616 |