Influential node detection in multilayer networks via fuzzy weighted information
Mining key nodes in multilayer networks is a topic of considerable importance and widespread interest. This task is crucial for understanding and optimizing complex networks, with far-reaching applications in fields such as social network analysis and biological systems modeling. This paper proposes...
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sg-ntu-dr.10356-1823792025-01-27T07:00:21Z Influential node detection in multilayer networks via fuzzy weighted information Lei, Mingli Liu, Lirong Ramirez-Arellano, Aldo Zhao, Jie Cheong, Kang Hao School of Physical and Mathematical Sciences Mathematical Sciences Multilayer networks Fuzzy weighted information Mining key nodes in multilayer networks is a topic of considerable importance and widespread interest. This task is crucial for understanding and optimizing complex networks, with far-reaching applications in fields such as social network analysis and biological systems modeling. This paper proposes an effective and efficient fuzzy weighted information model (FWI) to analyze the influential nodes in multilayer networks. In this model, a Joules law model is defined for quantifying the information of the nodes in each layer of the multilayer network. Moreover, the information of the nodes between each layer is then measured by the Jensen–Shannon divergence. The influential nodes in the multilayer network are analyzed using the FWI model to aggregate the information within and between layers. Validation on real-world networks and comparison with other methods demonstrate that FWI is effective and offers better differentiation than existing methods in identifying key nodes in multilayer networks. Ministry of Education (MOE) KHC and JZ were funded by the Singapore Ministry of Education Academic Research Fund (AcRF) Tier 1 (Grant No. RS01/24). 2025-01-27T07:00:20Z 2025-01-27T07:00:20Z 2025 Journal Article Lei, M., Liu, L., Ramirez-Arellano, A., Zhao, J. & Cheong, K. H. (2025). Influential node detection in multilayer networks via fuzzy weighted information. Chaos, Solitons and Fractals, 191, 115780-. https://dx.doi.org/10.1016/j.chaos.2024.115780 0960-0779 https://hdl.handle.net/10356/182379 10.1016/j.chaos.2024.115780 2-s2.0-85211198104 191 115780 en RS01/24 Chaos, Solitons and Fractals © 2024 Published by Elsevier Ltd. All rights reserved. |
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Mathematical Sciences Multilayer networks Fuzzy weighted information Lei, Mingli Liu, Lirong Ramirez-Arellano, Aldo Zhao, Jie Cheong, Kang Hao Influential node detection in multilayer networks via fuzzy weighted information |
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Mining key nodes in multilayer networks is a topic of considerable importance and widespread interest. This task is crucial for understanding and optimizing complex networks, with far-reaching applications in fields such as social network analysis and biological systems modeling. This paper proposes an effective and efficient fuzzy weighted information model (FWI) to analyze the influential nodes in multilayer networks. In this model, a Joules law model is defined for quantifying the information of the nodes in each layer of the multilayer network. Moreover, the information of the nodes between each layer is then measured by the Jensen–Shannon divergence. The influential nodes in the multilayer network are analyzed using the FWI model to aggregate the information within and between layers. Validation on real-world networks and comparison with other methods demonstrate that FWI is effective and offers better differentiation than existing methods in identifying key nodes in multilayer networks. |
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School of Physical and Mathematical Sciences |
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School of Physical and Mathematical Sciences Lei, Mingli Liu, Lirong Ramirez-Arellano, Aldo Zhao, Jie Cheong, Kang Hao |
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Article |
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Lei, Mingli Liu, Lirong Ramirez-Arellano, Aldo Zhao, Jie Cheong, Kang Hao |
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Lei, Mingli |
title |
Influential node detection in multilayer networks via fuzzy weighted information |
title_short |
Influential node detection in multilayer networks via fuzzy weighted information |
title_full |
Influential node detection in multilayer networks via fuzzy weighted information |
title_fullStr |
Influential node detection in multilayer networks via fuzzy weighted information |
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Influential node detection in multilayer networks via fuzzy weighted information |
title_sort |
influential node detection in multilayer networks via fuzzy weighted information |
publishDate |
2025 |
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https://hdl.handle.net/10356/182379 |
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1823108709589450752 |