A Novel and Efficient Method for Protecting Internet Usage from Unauthorized Access Using Map Reduce

The massive increases in data have paved a path for distributed computing, which in turn can reduce the data processing time. Though there are various approaches in distributed computing, Hadoop is one of the most efficient among the existing ones. Hadoop consists of different elements out of which Map Reduce is a scalable tool that enables to process a huge data in parallel. We proposed a Novel and Efficient User Profile Characterization under distributed environment. In this frame work the network anomalies are detected by using Hadoop Map Reduce technique. The experimental results clearly show that the proposed technique shows better performance.

[1]  Kulsoom Abdullah,et al.  Visualizing network data for intrusion detection , 2005, Proceedings from the Sixth Annual IEEE SMC Information Assurance Workshop.

[2]  Ping Zhou,et al.  Large-Scale Data Sets Clustering Based on MapReduce and Hadoop , 2011 .

[3]  Yon Dohn Chung,et al.  Parallel data processing with MapReduce: a survey , 2012, SGMD.

[4]  Sanjay Ghemawat,et al.  MapReduce: Simplified Data Processing on Large Clusters , 2004, OSDI.

[5]  Mukesh K. Mohania,et al.  Efficiently querying archived data using Hadoop , 2010, CIKM.

[6]  Lan Huang,et al.  Extraction of User Profile Based on the Hadoop Framework , 2009, 2009 5th International Conference on Wireless Communications, Networking and Mobile Computing.

[7]  Yun Tian,et al.  Improving MapReduce performance through data placement in heterogeneous Hadoop clusters , 2010, 2010 IEEE International Symposium on Parallel & Distributed Processing, Workshops and Phd Forum (IPDPSW).

[8]  Jimeng Sun,et al.  DisCo: Distributed Co-clustering with Map-Reduce: A Case Study towards Petabyte-Scale End-to-End Mining , 2008, 2008 Eighth IEEE International Conference on Data Mining.

[9]  A. Bhaskar,et al.  Identifying Network Anomalies Using Clustering Technique in Weblog Data , 2012, BIOINFORMATICS 2012.

[10]  Chenyu Wang,et al.  Exploring MapReduce efficiency with highly-distributed data , 2011, MapReduce '11.