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Enhancing Exfiltration Path Analysis Using Reinforcement Learning

Authors :
Rishu, Riddam
Kakkar, Akshay
Wang, Cheng
Rahman, Abdul
Redino, Christopher
Nandakumar, Dhruv
Cody, Tyler
Clark, Ryan
Radke, Daniel
Bowen, Edward
Publication Year :
2023

Abstract

Building on previous work using reinforcement learning (RL) focused on identification of exfiltration paths, this work expands the methodology to include protocol and payload considerations. The former approach to exfiltration path discovery, where reward and state are associated specifically with the determination of optimal paths, are presented with these additional realistic characteristics to account for nuances in adversarial behavior. The paths generated are enhanced by including communication payload and protocol into the Markov decision process (MDP) in order to more realistically emulate attributes of network based exfiltration events. The proposed method will help emulate complex adversarial considerations such as the size of a payload being exported over time or the protocol on which it occurs, as is the case where threat actors steal data over long periods of time using system native ports or protocols to avoid detection. As such, practitioners will be able to improve identification of expected adversary behavior under various payload and protocol assumptions more comprehensively.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.03667
Document Type :
Working Paper