Litcius/Paper detail

BotBuster: Multi-Platform Bot Detection Using a Mixture of Experts

Lynnette Hui Xian Ng, Kathleen M. Carley

2023Proceedings of the International AAAI Conference on Web and Social Media38 citationsDOIOpen Access PDF

Abstract

Despite rapid development, current bot detection models still face challenges in dealing with incomplete data and cross-platform applications. In this paper, we propose BotBuster, a social bot detector built with the concept of a mixture of experts approach. Each expert is trained to analyze a portion of account information, e.g. username, and are combined to estimate the probability that the account is a bot. Experiments on 10 Twitter datasets show that BotBuster outperforms popular bot-detection baselines (avg F1=73.54 vs avg F1=45.12). This is accompanied with F1=60.04 on a Reddit dataset and F1=60.92 on an external evaluation set. Further analysis shows that only 36 posts is required for a stable bot classification. Investigation shows that bot post features have changed across the years and can be difficult to differentiate from human features, making bot detection a difficult and ongoing problem.

Topics & Concepts

Computer scienceSet (abstract data type)Artificial intelligenceFace (sociological concept)Social mediaDetectorFace detectionMachine learningData setData miningPattern recognition (psychology)Facial recognition systemWorld Wide WebProgramming languageSocial scienceSociologyTelecommunicationsSpam and Phishing DetectionNetwork Security and Intrusion DetectionAdvanced Malware Detection Techniques