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VASSL: A Visual Analytics Toolkit for Social Spambot Labeling

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arxiv 1907.13319 v2 pith:ZFD2ZISG submitted 2019-07-31 cs.HC cs.SI

VASSL: A Visual Analytics Toolkit for Social Spambot Labeling

classification cs.HC cs.SI
keywords spambotslabelingsocialvasslaccountsanalyticsdetectingdetection
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Social media platforms such as Twitter are filled with social spambots. Detecting these malicious accounts is essential, yet challenging, as they continually evolve and evade traditional detection techniques. In this work, we propose VASSL, a visual analytics system that assists in the process of detecting and labeling spambots. Our tool enhances the performance and scalability of manual labeling by providing multiple connected views and utilizing dimensionality reduction, sentiment analysis and topic modeling techniques, which offer new insights that enable the identification of spambots. The system allows users to select and analyze groups of accounts in an interactive manner, which enables the detection of spambots that may not be identified when examined individually. We conducted a user study to objectively evaluate the performance of VASSL users, as well as capturing subjective opinions about the usefulness and the ease of use of the tool.

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