DocumentCode
2625789
Title
Anomaly detection using visualization and machine learning
Author
Mizoguchi, Fumio
Author_Institution
Inf. Media Center, Sci. Univ. of Tokyo, Japan
fYear
2000
fDate
2000
Firstpage
165
Lastpage
170
Abstract
Unauthorized access from inside or outside an organization has become a social problem in the last few years, making a system that can detect such accesses desirable. We therefore monitor normal activities using inductive logic programming (ILP) which is one of machine learning and detect anomalies. To ensure effective monitoring, we think the following two points must be considered. One point is automation of detection by ILP system, which is a rule generation engine, that always induces and updates effective rules. The other point is providing a visualization tool that reflects induced rules to the detection system. This tool enables an administrator to understand detection situations. For automated detection, we provide the ILP system with an automatic parameter adjustment function. For the visualization tool, we apply the visualization technology of a hyperbolic tree
Keywords
data visualisation; inductive logic programming; learning (artificial intelligence); anomaly detection; automatic parameter adjustment function; hyperbolic tree; inductive logic programming; machine learning; rule generation engine; unauthorized access; visualization; Automation; Computer networks; Condition monitoring; Engines; Intrusion detection; Logic programming; Machine learning; Statistics; Visual databases; Visualization;
fLanguage
English
Publisher
ieee
Conference_Titel
Enabling Technologies: Infrastructure for Collaborative Enterprises, 2000. (WET ICE 2000). Proeedings. IEEE 9th International Workshops on
Conference_Location
Gaithersburg, MD
ISSN
1080-1383
Print_ISBN
0-7695-0798-0
Type
conf
DOI
10.1109/ENABL.2000.883722
Filename
883722
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