Artificial Social Media Campaign Creation for Benchmarking and Challenging Detection Approaches

Pohl, Janina Susanne; Assenmacher, Dennis; Seiler, Moritz Vincent; Trautmann, Heike; Grimme, Christian

Research article in edited proceedings (conference) | Peer reviewed

Abstract

Social media platforms are essential for information sharing and, thus, prone to coordinated dis- and misinformation campaigns. Nevertheless, research in this area is hampered by strict data sharing regulations imposed by the platforms, resulting in a lack of benchmark data. Previous work focused on circumventing these rules by either pseudonymizing the data or sharing fragments. In this work, we will address the benchmarking crisis by presenting a methodology that can be used to create artificial campaigns out of original campaign building blocks. We conduct a proof-of-concept study using the freely available generative language model \texttt{GPT-Neo} in this context and demonstrate that the campaign patterns can flexibly be adapted to an underlying social media stream and evade state-of-the-art campaign detection approaches based on stream clustering. Thus, we not only provide a framework for artificial benchmark generation but also demonstrate the possible adversarial nature of such benchmarks for challenging and advancing current campaign detection methods.

Details about the publication

PublisherAssociation for the Advancement of Artificial Intelligence (AAAI)
Book titleWorkshop Proceedings of the 16th International Conference on Web and Social Media (ICWSM)
Page range1-10
Publishing companyAAAI Press
Place of publicationPalo Alto, CA, USA
StatusPublished
Release year2022
Language in which the publication is writtenEnglish
ConferenceInternational Conference on Web and Social Media, Atlanta, United States
DOI10.36190/2022.91
Link to the full texthttp://workshop-proceedings.icwsm.org/pdf/2022_91.pdf
KeywordsSocial Media; Campaign; Benchmarking; Augmentation

Authors from the University of Münster

Grimme, Christian
Data Science: Statistics and Optimization (Statistik)
Research Group Computational Social Science and Systems Analysis (CSSSA)
Lütke-Stockdiek, Janina Susanne
Data Science: Statistics and Optimization (Statistik)
Research Group Computational Social Science and Systems Analysis (CSSSA)
Seiler, Moritz Vinzent
Data Science: Statistics and Optimization (Statistik)
Trautmann, Heike
Data Science: Statistics and Optimization (Statistik)