DocumentCode
21492
Title
Behavioral Analysis of Insider Threat: A Survey and Bootstrapped Prediction in Imbalanced Data
Author
Azaria, Amos ; Richardson, Ariella ; Kraus, Sarit ; Subrahmanian, V.S.
Author_Institution
Machine Learning Dept., Carnegie Mellon Univ., Pittsburgh, PA, USA
Volume
1
Issue
2
fYear
2014
fDate
Jun-14
Firstpage
135
Lastpage
155
Abstract
The problem of insider threat is receiving increasing attention both within the computer science community as well as government and industry. This paper starts by presenting a broad, multidisciplinary survey of insider threat capturing contributions from computer scientists, psychologists, criminologists, and security practitioners. Subsequently, we present the behavioral analysis of insider threat (BAIT) framework, in which we conduct a detailed experiment involving 795 subjects on Amazon Mechanical Turk (AMT) in order to gauge the behaviors that real human subjects follow when attempting to exfiltrate data from within an organization. In the real world, the number of actual insiders found is very small, so supervised machine-learning methods encounter a challenge. Unlike past works, we develop bootstrapping algorithms that learn from highly imbalanced data, mostly unlabeled, and almost no history of user behavior from an insider threat perspective. We develop and evaluate seven algorithms using BAIT and show that they can produce a realistic (and acceptable) balance of precision and recall.
Keywords
computer network security; learning (artificial intelligence); statistical analysis; Amazon Mechanical Turk; BAIT; behavioral analysis of insider threat; bootstrapped prediction; bootstrapping algorithms; imbalanced data; supervised machine learning method; Algorithm design and analysis; Bayes methods; Computer security; Human factors; Predictive models; Psychology; Sociology; Behavioral models; computer security; insider threat;
fLanguage
English
Journal_Title
Computational Social Systems, IEEE Transactions on
Publisher
ieee
ISSN
2329-924X
Type
jour
DOI
10.1109/TCSS.2014.2377811
Filename
7010900
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