Finding Influential Users in Social Media Using Association Rule Learning
Fredrik Erlandsson, Piotr Br\'odka, Anton Borg, Henric Johnson

TL;DR
This paper introduces a method using association rule learning to identify influential users in social media, demonstrating its effectiveness and efficiency compared to traditional centrality measures.
Contribution
It presents a novel application of association rule learning for detecting influential users, with verified results showing improved speed and comparable accuracy.
Findings
Association rule learning can effectively identify influential users.
The method has lower execution time than existing centrality-based approaches.
Identified influential users correlate well with Degree and PageRank centrality results.
Abstract
Influential users play an important role in online social networks since users tend to have an impact on one other. Therefore, the proposed work analyzes users and their behavior in order to identify influential users and predict user participation. Normally, the success of a social media site is dependent on the activity level of the participating users. For both online social networking sites and individual users, it is of interest to find out if a topic will be interesting or not. In this article, we propose association learning to detect relationships between users. In order to verify the findings, several experiments were executed based on social network analysis, in which the most influential users identified from association rule learning were compared to the results from Degree Centrality and Page Rank Centrality. The results clearly indicate that it is possible to identify the…
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