Please use this identifier to cite or link to this item: http://localhost:8081/xmlui/handle/123456789/14415
Title: A Hybrid Approach for Intrusion Detection in Streaming Data using Data Mining Techniques
Authors: Maheshwari, Swati
Keywords: Data Mining Techniques;Intrusion Detection System (IDS)(software or hardware devices);Data Stream Mining;LERAD’s Ensemble
Issue Date: May-2016
Publisher: Department of Computer Science and Engineering,IITR.
Abstract: With the increase in the dependence on Internet for transactions and communications, ensuring security has become a necessity. Intrusion Detection System (IDS) is one of the important software or hardware devices in security architecture that is used to ensure a safe communication between organizations. Its capability to monitor the complete packet (promiscuously) makes it a good complement tool to other security tools like firewall, anti-virus etc. Data stream mining is an active research area that has recently emerged to discover knowledge from large amounts of continuously generated data. In this dissertation, we have focused on data streams and data mining techniques to be able to detect attacks on the fly, to learn new attacks for better accuracy in prediction and to generate alarms for the same. The dissertation has proposed a hybrid approach to efficiently detect intrusions in the network in real time with high accuracy. To improve the accuracy, both the intrusion detection approaches viz. Anomaly and Misuse detection has been used (in sequence). To improve the detection rate, we have used Decision Tree for creating the signatures for the attack data and LERAD’s ensemble for anomaly detection in the streaming data. LERAD is a rule-based algorithm for intrusion detection and falls under the category of Anomaly Detection approach of Intrusion Detection. We have implemented the algorithm using Python and its libraries and have tested our results on NSL-KDD dataset, benchmark in intrusion detection field by simulating the datasets as streaming data. All the major challenges with Streaming Data viz. Infinite Length, Concept Drift and Concept Evolution have been addressed. The report has shown incremental improvements in the accuracy and compared the proposed framework with the techniques used.
URI: http://hdl.handle.net/123456789/14415
metadata.dc.type: Other
Appears in Collections:DOCTORAL THESES (E & C)

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