Evaluating the role of community detection in improving influence maximization heuristics

Both community detection and influence maximization are well-researched fields of network science. Here, we investigate how several popular community detection algorithms can be used as part of a heuristic approach to influence maximization. The heuristic is based on the community value, a node-base...

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Bibliographic Details
Main Authors: Hajdu László
Krész Miklós
Bóta András
Format: Article
Published: 2021
Series:SOCIAL NETWORK ANALYSIS AND MINING 11 No. 1
Subjects:
doi:10.1007/s13278-021-00804-5

mtmt:32368527
Online Access:http://publicatio.bibl.u-szeged.hu/26066
Description
Summary:Both community detection and influence maximization are well-researched fields of network science. Here, we investigate how several popular community detection algorithms can be used as part of a heuristic approach to influence maximization. The heuristic is based on the community value, a node-based metric defined on the outputs of overlapping community detection algorithms. This metric is used to select nodes as high influence candidates for expanding the set of influential nodes. Our aim in this paper is twofold. First, we evaluate the performance of eight frequently used overlapping community detection algorithms on this specific task to show how much improvement can be gained compared to the originally proposed method of Kempe et al. Second, selecting the community detection algorithm(s) with the best performance, we propose a variant of the influence maximization heuristic with significantly reduced runtime, at the cost of slightly reduced quality of the output. We use both artificial benchmarks and real-life networks to evaluate the performance of our approach.
Physical Description:11
ISSN:1869-5450