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Tanimoto Based Similarity Measure for Intrusion Detection System

Tanimoto Based Similarity Measure for Intrusion Detection System
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摘要 In this paper we introduced Tanimoto based similarity measure for host-based intrusions using binary feature set for training and classification. The k-nearest neighbor (kNN) classifier has been utilized to classify a given process as either normal or attack. The experimentation is conducted on DARPA-1998 database for intrusion detection and compared with other existing techniques. The introduced similarity measure shows promising results by achieving less false positive rate at 100% detection rate. In this paper we introduced Tanimoto based similarity measure for host-based intrusions using binary feature set for training and classification. The k-nearest neighbor (kNN) classifier has been utilized to classify a given process as either normal or attack. The experimentation is conducted on DARPA-1998 database for intrusion detection and compared with other existing techniques. The introduced similarity measure shows promising results by achieving less false positive rate at 100% detection rate.
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出处 《Journal of Information Security》 2011年第4期195-201,共7页 信息安全(英文)
关键词 INTRUSION DETECTION kNN Classifier SIMILARITY MEASURE ANOMALY DETECTION Tanimoto SIMILARITY MEASURE Intrusion Detection kNN Classifier Similarity Measure Anomaly Detection Tanimoto Similarity Measure
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