Top-L Most Influential Community Detection Over Social Networks (Technical Report)
Nan Zhang, Yutong Ye, Xiang Lian, Mingsong Chen

TL;DR
This paper introduces the Top-L most Influential Community Detection problem in social networks, focusing on identifying influential communities that affect others, with efficient algorithms and diversity considerations.
Contribution
It proposes a novel influence-based community detection problem, develops pruning and indexing strategies, and introduces a diversified variant with a greedy solution, validated by extensive experiments.
Findings
Proposed efficient algorithms for Top-L influential communities.
Validated effectiveness and efficiency through experiments on real and synthetic data.
Introduced a diversified community detection variant with a greedy algorithm.
Abstract
In many real-world applications such as social network analysis and online marketing/advertising, the community detection is a fundamental task to identify communities (subgraphs) in social networks with high structural cohesiveness. While previous works focus on detecting communities alone, they do not consider the collective influences of users in these communities on other user nodes in social networks. Inspired by this, in this paper, we investigate the influence propagation from some seed communities and their influential effects that result in the influenced communities. We propose a novel problem, named Top-L most Influential Community DEtection (TopL-ICDE) over social networks, which aims to retrieve top-L seed communities with the highest influences, having high structural cohesiveness, and containing user-specified query keywords. In order to efficiently tackle the TopL-ICDE…
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Taxonomy
TopicsSpam and Phishing Detection · Complex Network Analysis Techniques · Internet Traffic Analysis and Secure E-voting
