Identifying influential nodes for influence maximization problem in social networks using an improved discrete particle swarm optimization

被引:0
作者
Jianxin Tang
Hongyu Zhu
Jimao Lan
Shihui Song
Jitao Qu
Qian Du
机构
[1] Lanzhou University of Technology,School of Computer and Communication
[2] Lanzhou University of Technology,Wenzhou Engineering Institute of Pump & Valve
来源
Social Network Analysis and Mining | / 13卷
关键词
Social networks; Influence maximization; Meta-heuristic algorithm; Discrete particle swarm optimization;
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学科分类号
摘要
Influence maximization problem is to select a set of influential nodes and maximize the influence spread of the seed set in the social networks. Greedy strategies are high time consumption, especially in large-scale networks, and therefore cannot be efficiently applied to practical scenarios. Meta-heuristic algorithms have been demonstrated by simulations as efficient ways to solve the intractable problem, but some of them suffer from premature easily. To solve the problem effectively, an improved discrete particle swarm optimization called IDPSO is proposed in this study. According to the framework, in the local search operation, nodes in the candidate seed set are randomly selected to be improved, giving each node an even opportunity to be selected as a candidate. Then, particles tend to be trapped into local optimum are labeled for further exploitation. Finally, local search operation is performed on the labeled particles and the current global optimal particle. Results on practical social networks show that IDPSO outperforms as a more promising and robust method.
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[1]  
Biswas TK(2022)A two-stage vikor assisted multi-operator differential evolution approach for influence maximization in social networks Exp Syst Appl 192 342-298
[2]  
Abbasi A(2012)A 61-million-person experiment in social influence and political mobilization Nature 489 295-14
[3]  
Chakrabortty RK(2019)Influence of fake news in twitter during the 2016 us presidential election Nat Commun 10 1-13657
[4]  
Bond RM(2014)Integrating social networks and human social motives to achieve social influence at scale Proc Natl Acad Sci 111 13650-130
[5]  
Fariss CJ(2018)Ddse: a novel evolutionary algorithm based on degree-descending search strategy for influence maximization in social networks J Netw Comput Appl 103 119-239
[6]  
Jones JJ(2023)Tsifim: a three-stage iterative framework for influence maximization in complex networks Exp Syst Appl 212 702-102
[7]  
Bovet A(1978)Centrality in social networks conceptual clarification Soc Netw 1 215-614
[8]  
Makse HA(2009)Maximizing influence propagation in networks with community structure Phys Rev E 79 056-28
[9]  
Contractor NS(2016)Influence maximization in social networks based on discrete particle swarm optimization Inf Sci 367 600-133
[10]  
DeChurch LA(2013)Information diffusion in online social networks: a survey ACM Sigmod Rec 42 17-2150