Community-based influence maximization in attributed networks

被引:0
作者
Huimin Huang
Hong Shen
Zaiqiao Meng
机构
[1] Sun Yat-sen University,School of Data and Computer Science
[2] University of Adelaide,School of Computer Science
来源
Applied Intelligence | 2020年 / 50卷
关键词
Attributed networks; Influence maximization; Influence strength; Community detection;
D O I
暂无
中图分类号
学科分类号
摘要
Influence Maximization, aiming at selecting a small set of seed users in a social network to maximize the spread of influence, has attracted considerable attention recently. Most existing influence maximization algorithms focus on pure networks, while in many real-world social networks, nodes are often associated with a rich set of attributes or features, aka attributed networks. Moreover, most of existing influence maximization methods suffer from the problems of high computational cost and no performance guarantee, as these methods heavily depend on analysis and exploitation of network structure. In this paper, we propose a new algorithm to solve community-based influence maximization problem in attributed networks, which consists of three steps: community detection, candidate community generation and seed node selection. Specifically, we first propose the candidate community generation process, which utilizes information of community structure as well as node attribute to narrow down possible community candidates. We then propose a model to predict influence strength between nodes in attributed network, which takes advantage of topology structure similarity and attribute similarity between nodes in addition to social interaction strength, thus improve the prediction accuracy comparing to the existing methods significantly. Finally, we select seed nodes by proposing the computation method of influence set, through which the marginal influence gain of nodes can be calculated directly, avoiding tens of thousands of Monte Carlo simulations and ultimately making the algorithm more efficient. Experiments on four real social network datasets demonstrate that our proposed algorithm outperforms state-of-the-art influence maximization algorithms in both influence spread and running time.
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页码:354 / 364
页数:10
相关论文
共 31 条
[1]  
Chen YC(2014)Cim:, communitybased influence maximization in social networks IEEE Trans Intell Syst Technol 5 25:1-25:31
[2]  
Zhu WY(2015)Conformity-aware influence maximization in online social networks VLDB J 24 117-141
[3]  
Lee WC(2008)Fast unfolding of communities in large networks J Stat Mech Theory Exp 2008 P10008-94
[4]  
Lee SY(2018)Dissimilarity-constrained node attribute coverage diversification for novelty-enhanced top-k search in large attributed networks Knowl-Based Syst 150 85-444
[5]  
Li H(2001)Birds of a feather: homophily in social networks Ann Rev Sociol 274 15-100
[6]  
Bhowmick SS(2017)CoFIM: A community-based framework for influence maximization on large-scale networks Knowl-Based Syst 117 88-85
[7]  
Sun A(2016)Targetd revision: a learning-basd approach for incremental community detection in dynamic networks Physica A:, Statistical Mechanics and its Applications 443 70-93
[8]  
Cu J(2018)An empirical comparison on state-of-the-art multi-class imbalance learning algorithms and a new diversified ensemble learning scheme Knowl-Based Syst 158 81-84
[9]  
Blondel VD(2013)Identifying influential nodes in complex networks with community structure Knowl-Based Syst 42 74-undefined
[10]  
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