Status | 已发表Published |
Title | ToupleGDD: A Fine-Designed Solution of Influence Maximization by Deep Reinforcement Learning |
Creator | |
Date Issued | 2024-04-01 |
Source Publication | IEEE Transactions on Computational Social Systems
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ISSN | 2329-924X |
Volume | 11Issue:2Pages:2210-2221 |
Abstract | Aiming at selecting a small subset of nodes with maximum influence on networks, the influence maximization (IM) problem has been extensively studied. Since it is #P-hard to compute the influence spread given a seed set, the state-of-the-art methods, including heuristic and approximation algorithms, are faced with great difficulties such as theoretical guarantee, time efficiency, generalization, and so on. This makes it unable to adapt to large-scale networks and more complex applications. On the other side, with the latest achievements of deep reinforcement learning (DRL) in artificial intelligence and other fields, lots of work have been focused on exploiting DRL to solve combinatorial optimization (CO) problems. Inspired by this, we propose a novel end-to-end DRL framework, ToupleGDD, to address the IM problem in this article, which incorporates three coupled graph neural networks (GNNs) for network embedding and double deep Q -networks (DQNs) for parameters learning. Previous efforts to solve the IM problem with DRL trained their models on subgraphs of the whole network and then tested them on the whole graph, which makes the performance of their models unstable among different networks. However, our model is trained on several small randomly generated graphs with a small budget and tested on completely different networks under various large budgets, which can obtain results very close to IMM and better results than OPIM-C on several datasets and shows strong generalization ability. Finally, we conduct a large number of experiments on synthetic and realistic datasets and experimental results prove the effectiveness and superiority of our model. |
Keyword | Deep reinforcement learning (DRL) generalization graph neural networks (GNNs) influence maximization (IM) social network |
DOI | 10.1109/TCSS.2023.3272331 |
URL | View source |
Indexed By | SCIE |
Language | 英语English |
WOS Research Area | Computer Science |
WOS Subject | Computer Science, Cybernetics ; Computer Science, Information Systems |
WOS ID | WOS:001005023300001 |
Scopus ID | 2-s2.0-85160236180 |
Citation statistics | |
Document Type | Journal article |
Identifier | http://repository.uic.edu.cn/handle/39GCC9TT/11477 |
Collection | Faculty of Science and Technology |
Corresponding Author | Guo, Jianxiong |
Affiliation | 1.The University of Texas at Dallas, Department of Computer Science, Richardson, 75080, United States 2.Beijing Normal University, Advanced Institute of Natural Sciences, Zhuhai, 519087, China 3.BNU-HKBU United International College, Guangdong Key Laboratory of AI and Multi-Modal Data Processing, Zhuhai, 519087, China |
Corresponding Author Affilication | Beijing Normal-Hong Kong Baptist University |
Recommended Citation GB/T 7714 | Chen, Tiantian,Yan, Siwen,Guo, Jianxionget al. ToupleGDD: A Fine-Designed Solution of Influence Maximization by Deep Reinforcement Learning[J]. IEEE Transactions on Computational Social Systems, 2024, 11(2): 2210-2221. |
APA | Chen, Tiantian, Yan, Siwen, Guo, Jianxiong, & Wu, Weili. (2024). ToupleGDD: A Fine-Designed Solution of Influence Maximization by Deep Reinforcement Learning. IEEE Transactions on Computational Social Systems, 11(2), 2210-2221. |
MLA | Chen, Tiantian,et al."ToupleGDD: A Fine-Designed Solution of Influence Maximization by Deep Reinforcement Learning". IEEE Transactions on Computational Social Systems 11.2(2024): 2210-2221. |
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