Modelling Direct Messaging Networks with Multiple Recipients for Cyber Deception
Kristen Moore, Cody J. Christopher, David Liebowitz, Surya Nepal,, Renee Selvey

TL;DR
This paper introduces a framework combining a temporal point process model and language models to automate the generation of realistic, multi-party communication content for cyber deception, enhancing scalable defense strategies.
Contribution
It presents the LogNormMix-Net Temporal Point Process for modeling communication timing and a method to generate convincing multi-party conversation content using fine-tuned language models.
Findings
Successful simulation of email communication patterns
Generation of realistic multi-party conversation threads
Evaluation shows high realism and engagement potential
Abstract
Cyber deception is emerging as a promising approach to defending networks and systems against attackers and data thieves. However, despite being relatively cheap to deploy, the generation of realistic content at scale is very costly, due to the fact that rich, interactive deceptive technologies are largely hand-crafted. With recent improvements in Machine Learning, we now have the opportunity to bring scale and automation to the creation of realistic and enticing simulated content. In this work, we propose a framework to automate the generation of email and instant messaging-style group communications at scale. Such messaging platforms within organisations contain a lot of valuable information inside private communications and document attachments, making them an enticing target for an adversary. We address two key aspects of simulating this type of system: modelling when and with whom…
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Taxonomy
TopicsOpportunistic and Delay-Tolerant Networks · Cybersecurity and Cyber Warfare Studies · Digital and Cyber Forensics
