DocumentCode
780359
Title
Multivariate statistical analysis of audit trails for host-based intrusion detection
Author
Ye, Nong ; Emran, Syed Masum ; Chen, Qiang ; Vilbert, Sean
Author_Institution
Arizona State Univ., Tempe, AZ, USA
Volume
51
Issue
7
fYear
2002
fDate
7/1/2002 12:00:00 AM
Firstpage
810
Lastpage
820
Abstract
Intrusion detection complements prevention mechanisms, such as firewalls, cryptography, and authentication, to capture intrusions into an information system while they are acting on the information system. Our study investigates a multivariate quality control technique to detect intrusions by building a long-term profile of normal activities in information systems (norm profile) and using the norm profile to detect anomalies. The multivariate quality control technique is based on Hotelling´s T2 test that detects both counterrelationship anomalies and mean-shift anomalies. The performance of the Hotelling´s T 2 test is examined on two sets of computer audit data: a small data set and a large multiday data set. Both data sets contain sessions of normal and intrusive activities. For the small data set, the Hotelling´s T2 test signals all the intrusion sessions and produces no false alarms for the normal sessions. For the large data set, the Hotelling´s T2 test signals 92 percent of the intrusion sessions while producing no false alarms for the normal sessions. The performance of the Hotelling´s T2 test is also compared with the performance of a more scalable multivariate technique-a chi-squared distance test
Keywords
auditing; information systems; security of data; statistical analysis; T2 test; anomaly detection; audit trails; chi-squared distance test; computer audit data; counterrelationship anomalies; false alarms; host-based intrusion detection; information system; large multiday data set; long-term normal activity profile; mean-shift anomalies; multivariate quality control technique; multivariate statistical analysis; norm profile; small data set; Authentication; Cryptography; Information security; Information systems; Intrusion detection; Management information systems; Power system security; Quality control; Statistical analysis; Testing;
fLanguage
English
Journal_Title
Computers, IEEE Transactions on
Publisher
ieee
ISSN
0018-9340
Type
jour
DOI
10.1109/TC.2002.1017701
Filename
1017701
Link To Document