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Kim, Junghoon
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LUEM : Local User Engagement Maximization in Networks

Author(s)
Kim, JunghoonKim, JungeunJeong, Hyun JiLim, Sungsu
Issued Date
2022-11
DOI
10.1016/j.knosys.2022.109788
URI
https://scholarworks.unist.ac.kr/handle/201301/59254
Citation
KNOWLEDGE-BASED SYSTEMS, v.255, pp.109788
Abstract
Understanding a social network is a fundamental problem in social network analysis because of its numerous applications. Recently, user engagement in networks has received extensive attention from many research groups. However, most user engagement models focus on global user engagement to maximize (or minimize) the number of engaged users. In this study, we formulate the so-called Local User Engagement Maximization (LUEM) problem. We prove that the LUEM problem is NP-hard. To obtain high-quality results, we propose an approximation algorithm that incorporates a traditional hill-climbing method. To improve efficiency, we propose an efficient pruning strategy while maintaining effectiveness. In addition, by observing the relationship between the degree and user engagement, we propose an efficient heuristic algorithm that preserves effectiveness. Finally, we conducted extensive experiments on ten real-world networks to demonstrate the superiority of the proposed algorithms. We observed that the proposed algorithm achieved up to 605% more engaged users compared to the best baseline algorithms.
Publisher
Elsevier BV
ISSN
0950-7051
Keyword (Author)
Cohesive subgraph discoveryMinimum degreeUser engagementSocial network analysisInfluence maximization
Keyword
EFFECTIVE COMMUNITY SEARCHCORE DECOMPOSITIONSOCIAL NETWORKSCENTRALITYALGORITHMSEFFICIENT

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