Reinforcement-Learning Based Covert Social Influence Operations

Abstract

How might reinforcement-learning based covert social influence operations (CSIOs) be run, given that the CSIO agent wants to maximize influence and minimize discoverability of malicious accounts? And how successful can they be, given that both social platform bot detectors and humans might report them to the social platform? To answer these questions, we propose RL_CSIO, an RL-based methodology for running CSIOs and run 4 CSIOs with IRB-approval over a period of 5 days using a panel of 225 human subjects. We explore 8 research questions based on the data collected. The results show that RL_CSIO agents successfully trade off influence and discoverability - but in ways that are nuanced and unexpected.

Publication
The Web Conference (WWW-2025). [Core: A* Ranked] (Accepted)
Saurabh Kumar
Saurabh Kumar
Assistant Professor

My research interests include cybersecurity, Android security, malware analysis and ceyber forensics.