talk: Autonomous Agents, Deep Learning, and Graphs for Cyber Defense, 12-1 Fri. 3/13
The UMBC Cyber Defense Lab presents
Autonomous Agents, Deep Learning,
and Graphs for Cyber Defense
Dr. Hasan Cam
Army Research Laboratory
12–1 pm Friday, 13 March 2020, ITE 227, UMBC
Cyber resilience usually refers to the ability of an entity to detect, respond to, and recover from cybersecurity attacks to the extent that the entity can continuously deliver the intended outcome despite their presence. Cybersecurity tools such as intrusion detection and prevention systems usually generate far too many alerts, indicators or log data, many of which do not have obvious security implications unless their correlations and temporal causality relationships are determined. In this talk, I will present methods to first estimate the infected and exploited assets and then take recovery and preventive actions using autonomous agents, deep learning, and graphs. Autonomous adversary and defender agents are designed such that the adversary agent can infer the adversary activities and intentions, based on cybersecurity observations and measurements, while the defender agent aims at estimating the best reactive and pro-active actions to protect assets and mitigate the adversary activities. The graph thinking and causality analysis of cyber infection and exploitation helps predict the infection states of some assets. This prediction data of infections is taken as input data by deep reinforcement learning to train agents for determining effective actions. This talk will discuss some preliminary results from the development of building an automated system of autonomous agents to provide cyber resiliency over networks.
Hasan Cam is a Computer Scientist at US Army Research Laboratory. He currently works on the projects involved with autonomous agents, active malware defense, cyber resiliency, and risk assessment over wired, mobile, and tactical networks. His research interests include cybersecurity, machine learning, data analytics, networks, algorithms, and parallel processing. He served as the government lead for the Risk area in Cyber Collaborative Research Alliance. He has previously worked as a faculty member in academia and a senior research scientist in the industry. He has served as an editorial member of two journals, a guest editor of two special issues of journals, an organizer of symposiums and workshops, and a Technical Program Committee Member in numerous conferences. He received a Ph.D. degree in electrical and computer engineering from Purdue University, and an M.S. degree in computer science from Polytechnic University, New York. He is a Senior Member of IEEE.
Host: Alan T. Sherman, *protected email*
Support for this event was provided in part by the National Science Foundation under SFS grant DGE-1753681. The UMBC Cyber Defense Lab meets biweekly Fridays. All meetings are open to the public. Upcoming CDL Meetings:
- Mar 27, Dan Yaroslaski, cybercommand
- Apr 10, Russ Fink (APL), ransomware
- Apr 24, Lance Hoffman (GWU), policy
- May 8, Jason Wells, law enforcement
- May 22, Spring SFS Meeting at UMBC, 9:30-2, ITE 456
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Posted: March 8, 2020, 1:06 PM