EDG-DQN: An Enhanced Hybrid Architecture for Influence Maximization via Deep Reinforcement Learning
(1. College of Mathematics and Computer Science, Dali University, Dali, Yunnan 671003, China; 2. College of Engineering, Dali University, Dali, Yunnan 671003, China)
Li Yuxiang, Zhang Jinming, Zhang Jun, Ruan Huiqiong, Luo Guilan. EDG-DQN: An Enhanced Hybrid Architecture for Influence Maximization via Deep Reinforcement Learning[J]. Journal of Dali University, 2026, 11(6): 27-38.
〔1〕 马欣, 王才奎, 胡安顺, 等. 云南省区域气候复杂层级网络建模与仿真分析〔J〕. 大理大学学报, 2024, 9(12):36-45.
〔2〕 宋杰, 胡永茂, 罗艳碧. 基于WSN网络覆盖优化问题的群智能优化算法比较分析〔J〕. 大理大学学报, 2024, 9(12): 65-73.
〔3〕 SINGH S S, MUHURI S, MISHRA S, et al. Social Network Analysis: A Survey on Process, Tools, and Applicatio[J].ACM computing surveys, 2024, 56(8): 1-39.
〔4〕 SINGH S S, SRIVASTVA D, VERMA M, et al. Influence Maximization Frameworks, Performance, Challenges and Directions on Social Network: A Theoretical Study〔J〕.Journal of King Saud University-Computer and Information Sciences, 2022, 34(9): 7570-7603.
〔5〕 ARTIME O, GRASSIA M, DE DOMENICO M, et al. Robustness and Resilience of Complex Networks〔J〕.Nature Reviews Physics,2024,6(2):114-131.
〔6〕 LIU Z W, WAN G C, PRAKASH B A, et al. A Review of Graph Neural Networks in Epidemic Modeling〔C〕//Proceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining. Barcelona Spain.ACM,2024:6577-6587.
〔7〕 XIE M, ZHAN X X, LIU C, et al. An Efficient Adaptive Degree-Based Heuristic Algorithm for Influence Maximiza⁃
tion in Hypergraphs〔J〕.Information Processing & Management, 2023, 60(2): 103161.
〔8〕 WANG J H, WU Y P, WANG X Y, et al. Effective Influence Maximization with Priority〔C〕//Proceedings of the ACM on Web Conference 2025. 28 April 2025, Sydney
NSW, Australia. ACM, 2025: 4673-4683.
〔9〕 SAXENA A, FLETCHER G, PECHENIZKIY M. FairSNA:Algorithmic Fairness in Social Network Analysis〔J〕. ACM Computing Surveys, 2024, 56(8): 1-45.
〔10〕 LI Y D, GAO H B, GAO Y X, et al. A Survey on Influence Maximization: From an ML-Based Combinatorial Optimization〔J〕. ACM Transactions on Knowledge Discovery from Data, 2023, 17(9): 1-50.
〔11〕 DONG S, WANG P, ABBAS K. A Survey on Deep Learning and Its Applications〔J〕. Computer Science Review,
2021, 40: 100379.
〔12〕 LI H, XU M T, BHOWMICK S S, et al. PIANO: Influence Maximization Meets Deep Reinforcement Learn⁃
ing〔J〕. IEEE Transactions on Computational Social Systems, 2023, 10(3): 1288-1300.
〔13〕 XIONG Y, HU Z, SU C, et al. Vital Node Identification in Complex Networks Based on Autoencoder and Graph Neural Network〔J〕. Applied Soft Computing, 2024,163: 111895.
〔14〕 WANG W, NIE Y Y, LI W Y, et al. Epidemic Spreading on Higher-Order Networks〔J〕. Physics Reports, 2024,1056: 1-70.
〔15〕 CHEN T T, YAN S W, GUO J X, et 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.
〔16〕 SHAKYA A K, PILLAI G, CHAKRABARTY S. Reinforcement Learning Algorithms: A Brief Survey〔J〕. Expert Systems with Applications, 2023, 231: 120495.
〔17〕 LAHAV A, TAL A. MeshWalker: Deep Mesh Understanding by Random Walks〔J〕. ACM Transactions on Graphics( TOG),2020,39(6):1-13.
〔18〕 CORSO G, STARK H, JEGELKA S, et al. Graph Neural Networks〔J〕. Nature Reviews Methods Primers,2024,4:17.
〔19〕 WANG K S, XIA X, LIU J, et al. Strengthening Layer Interaction via Dynamic Layer Attention〔EB/OL〕. 〔2025-02-01〕. https://arxiv.org/abs/2406.13392.
〔20〕 LING C, JIANG J J, WANG J X, et al. Deep Graph Representation Learning and Optimization for Influence Maximization〔EB/OL〕. 〔2025-02-01〕. https://arxiv. org/abs/2305.02200.
〔21〕 WAIKHOM L, PATGIRI R. A Survey of Graph Neural Networks in Various Learning Paradigms: Methods, Ap⁃
plications, and Challenges〔J〕. Artificial Intelligence Review, 2023, 56(7): 6295-6364.
〔22〕 MIENYE I D, SWART T G, OBAIDO G. Recurrent Neural Networks: A Comprehensive Review of Architectures,Variants, and Applications〔J〕. Information, 2024, 15(9): 517.
〔23〕袁锦诚,李忠木.基于长短期记忆网络模型的大理气候预测〔J〕.大理大学学报,2023,8(6):44-51.
〔24〕 YANG S X, DU Q M, ZHU G X, et al. Balanced Influence Maximization in Social Networks Based on Deep Reinforcement Learning〔J〕. Neural Networks, 2024, 169:334-351.
〔25〕 DO N, CHOWDHURY T, LING C, et al. MIM-Reasoner:Learning with Theoretical Guarantees for Multiplex Influence Maximization〔EB/OL〕. 〔2025-02-01〕. https://arxiv.org/abs/2402.16898.
〔26〕 ACHOUR O, BEN ROMDHANE L. A Theoretical Review on Multiplex Influence Maximization Models: Theories,Methods, Challenges, and Future Directions〔J〕. Expert Systems with Applications, 2025, 266: 125990.
〔27〕 DANN M, THANGARAJAH J. Adapting to Reward Progressivity via Spectral Reinforcement Learning〔EB/OL〕.〔2025-02-01〕. https://arxiv.org/abs/2104.14138.