6533b827fe1ef96bd128653b
RESEARCH PRODUCT
Online anomaly detection using dimensionality reduction techniques for HTTP log analysis
Tuomo SipolaHämäläinen TimoAntti Juvonensubject
ta113Web serverComputer Networks and Communicationsbusiness.industryComputer scienceRandom projectionDimensionality reductionRandom projectionPrincipal component analysisIntrusion detection systemAnomaly detectionMachine learningcomputer.software_genreCyber securityWeb trafficPrincipal component analysisDiffusion mapAnomaly detectionIntrusion detectionArtificial intelligenceData miningWeb servicebusinesskyberturvallisuuscomputerdescription
Modern web services face an increasing number of new threats. Logs are collected from almost all web servers, and for this reason analyzing them is beneficial when trying to prevent intrusions. Intrusive behavior often differs from the normal web traffic. This paper proposes a framework to find abnormal behavior from these logs. We compare random projection, principal component analysis and diffusion map for anomaly detection. In addition, the framework has online capabilities. The first two methods have intuitive extensions while diffusion map uses the Nyström extension. This fast out-of-sample extension enables real-time analysis of web server traffic. The framework is demonstrated using real-world network log data. Actual abnormalities are found from the dataset and the capabilities of the system are evaluated and discussed. These results are useful when designing next generation intrusion detection systems. The presented approach finds intrusions from high-dimensional datasets in real time. peerReviewed
year | journal | country | edition | language |
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2015-11-01 |