TL;DR
UnDBot introduces an unsupervised, interpretable framework for social bot detection based on structural information theory, utilizing social relationship metrics and entropy optimization to effectively identify bot communities.
Contribution
This work presents a novel unsupervised detection method that leverages structural information theory for interpretability and long-distance correlation modeling in social networks.
Findings
Outperforms ten existing social bot detection methods.
Demonstrates high effectiveness and interpretability on four real datasets.
Provides a hierarchical clustering approach for social bot community detection.
Abstract
Research on social bot detection plays a crucial role in maintaining the order and reliability of information dissemination while increasing trust in social interactions. The current mainstream social bot detection models rely on black-box neural network technology, e.g., Graph Neural Network, Transformer, etc., which lacks interpretability. In this work, we present UnDBot, a novel unsupervised, interpretable, yet effective and practical framework for detecting social bots. This framework is built upon structural information theory. We begin by designing three social relationship metrics that capture various aspects of social bot behaviors: Posting Type Distribution, Posting Influence, and Follow-to-follower Ratio. Three new relationships are utilized to construct a new, unified, and weighted social multi-relational graph, aiming to model the relevance of social user behaviors and…
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