My Brother Helps Me: Node Injection Based Adversarial Attack on Social Bot Detection
Social platforms such as Twitter are under siege from a multitude of fraudulent users. In response, social bot detection tasks have been developed to identify such fake users. Due to the structure of social networks, the majority of methods are based on the graph neural network(GNN), which is suscep...
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Zusammenfassung: | Social platforms such as Twitter are under siege from a multitude of
fraudulent users. In response, social bot detection tasks have been developed
to identify such fake users. Due to the structure of social networks, the
majority of methods are based on the graph neural network(GNN), which is
susceptible to attacks. In this study, we propose a node injection-based
adversarial attack method designed to deceive bot detection models. Notably,
neither the target bot nor the newly injected bot can be detected when a new
bot is added around the target bot. This attack operates in a black-box
fashion, implying that any information related to the victim model remains
unknown. To our knowledge, this is the first study exploring the resilience of
bot detection through graph node injection. Furthermore, we develop an
attribute recovery module to revert the injected node embedding from the graph
embedding space back to the original feature space, enabling the adversary to
manipulate node perturbation effectively. We conduct adversarial attacks on
four commonly used GNN structures for bot detection on two widely used
datasets: Cresci-2015 and TwiBot-22. The attack success rate is over 73\% and
the rate of newly injected nodes being detected as bots is below 13\% on these
two datasets. |
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DOI: | 10.48550/arxiv.2310.07159 |