Efficient Intrusion Detection System Using Stream Data Mining Classification Technique

Recent emerging growth of data created so many challenges in data mining. Data mining is the process of extracting valid, previously known & comprehensive datasets for the future decision making. As the improved technology by World Wide Web the streaming data come into picture with its challenges. The data which change with time & update its value is known as streaming data. As the most of the data is streaming in nature, there are so many challenges need to face in the sense of security perspective. Intrusion Detection System (IDS) works in the supposition of detecting the intruders to protect the respective system. The research in data stream mining & Intrusion detection system gained high attraction due to the importance of system's safety measure. Algorithms, systems & frameworks that address security challenges have been developed over the past years. In this paper, we present the mechanism to improve the efficiency of the IDS using streaming data mining technique. We apply four selected stream data classification algorithms on NSL-KDD datasets and compare their results. Based on the comparative analysis of their results best method is found out for efficiency improvement of IDS.

[1]  Manish Kumar,et al.  Intrusion detection system using stream data mining and drift detection method , 2013, 2013 Fourth International Conference on Computing, Communications and Networking Technologies (ICCCNT).

[2]  S. Muthukrishnan,et al.  Data streams: algorithms and applications , 2005, SODA '03.

[3]  M. A. Peer,et al.  Comparative study of streaming data mining techniques , 2014, 2014 International Conference on Computing for Sustainable Global Development (INDIACom).

[4]  Kun Liu,et al.  VEDAS: A Mobile and Distributed Data Stream Mining System for Real-Time Vehicle Monitoring , 2004, SDM.

[5]  Albert Bifet,et al.  Massive Online Analysis , 2009 .

[6]  Arthur B. Maccabe,et al.  The architecture of a network level intrusion detection system , 1990 .

[7]  Mohamed Medhat Gaber,et al.  On-board Mining of Data Streams in Sensor Networks , 2005 .

[8]  Philip S. Yu,et al.  Online Mining of Changes from Data Streams: Research Problems and Preliminary Results , 2003 .

[9]  Philip S. Yu,et al.  On demand classification of data streams , 2004, KDD.

[10]  Mohamed Medhat Gaber,et al.  Towards an Adaptive Approach for Mining Data Streams in Resource Constrained Environments , 2004, DaWaK.

[11]  Michael Stonebraker,et al.  Load Shedding on Data Streams , 2003 .

[12]  Mohamed Medhat Gaber,et al.  A cost-efficient model for ubiquitous data stream mining , 2004 .

[13]  Jennifer Widom,et al.  Models and issues in data stream systems , 2002, PODS.

[14]  Rajeev Motwani,et al.  Load Shedding Techniques for Data Stream Systems , 2003 .

[15]  Jiawei Han,et al.  Data Mining: Concepts and Techniques , 2000 .

[16]  Graham Cormode,et al.  What's hot and what's not: tracking most frequent items dynamically , 2003, PODS '03.

[17]  Geoff Holmes,et al.  MOA: Massive Online Analysis , 2010, J. Mach. Learn. Res..

[18]  Albert Bifet,et al.  Mining Big Data in Real Time , 2013, Informatica.