DocumentCode
2882154
Title
Moving target defense for adaptive adversaries
Author
Colbaugh, Richard ; Glass, Kevin
Author_Institution
Sandia Nat. Labs., Albuquerque, NM, USA
fYear
2013
fDate
4-7 June 2013
Firstpage
50
Lastpage
55
Abstract
Machine learning (ML) plays a central role in the solution of many security problems, for example enabling malicious and innocent activities to be rapidly and accurately distinguished and appropriate actions to be taken. Unfortunately, a standard assumption in ML - that the training and test data are identically distributed - is typically violated in security applications, leading to degraded algorithm performance and reduced security. Previous research has attempted to address this challenge by developing ML algorithms which are either robust to differences between training and test data or are able to predict and account for these differences. This paper adopts a different approach, developing a class of moving target (MT) defenses that are difficult for adversaries to reverse-engineer, which in turn decreases the adversaries´ ability to generate training/test data differences that benefit them. We leverage the coevolutionary relationship between attackers and defenders to derive a simple, flexible MT defense strategy which is optimal or nearly optimal for a broad range of security problems. Case studies involving two distinct cyber defense applications demonstrate that the proposed MT algorithm outperforms standard static methods, offering effective defense against intelligent, adaptive adversaries.
Keywords
learning (artificial intelligence); performance evaluation; reverse engineering; security of data; ML algorithms; adaptive adversaries; algorithm performance degradation; flexible MT defense strategy; innocent activities; machine learning; malicious activities; moving target defense; reverse-engineer; security applications; security problems; standard static methods; Biological system modeling; Games; Security; Switches; Training; Unsolicited electronic mail; adaptive adversaries; cyber security; hybrid dynamical systems; machine learning; moving target defense;
fLanguage
English
Publisher
ieee
Conference_Titel
Intelligence and Security Informatics (ISI), 2013 IEEE International Conference on
Conference_Location
Seattle, WA
Print_ISBN
978-1-4673-6214-6
Type
conf
DOI
10.1109/ISI.2013.6578785
Filename
6578785
Link To Document