DocumentCode :
3712781
Title :
Use of machine learning in big data analytics for insider threat detection
Author :
Michael Mayhew;Michael Atighetchi;Aaron Adler;Rachel Greenstadt
Author_Institution :
United States Air Force Research Laboratory, Rome, NY, USA
fYear :
2015
Firstpage :
915
Lastpage :
922
Abstract :
In current enterprise environments, information is becoming more readily accessible across a wide range of interconnected systems. However, trustworthiness of documents and actors is not explicitly measured, leaving actors unaware of how latest security events may have impacted the trustworthiness of the information being used and the actors involved. This leads to situations where information producers give documents to consumers they should not trust and consumers use information from non-reputable documents or producers. The concepts and technologies developed as part of the Behavior-Based Access Control (BBAC) effort strive to overcome these limitations by means of performing accurate calculations of trustworthiness of actors, e.g., behavior and usage patterns, as well as documents, e.g., provenance and workflow data dependencies. BBAC analyses a wide range of observables for mal-behavior, including network connections, HTTP requests, English text exchanges through emails or chat messages, and edit sequences to documents. The current prototype service strategically combines big data batch processing to train classifiers and real-time stream processing to classifier observed behaviors at multiple layers. To scale up to enterprise regimes, BBAC combines clustering analysis with statistical classification in a way that maintains an adjustable number of classifiers.
Keywords :
"Access control","Feature extraction","Computer security","Big data","Monitoring","Electronic mail"
Publisher :
ieee
Conference_Titel :
Military Communications Conference, MILCOM 2015 - 2015 IEEE
Type :
conf
DOI :
10.1109/MILCOM.2015.7357562
Filename :
7357562
Link To Document :
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