Sandeep Chaurasia

Work place: Department of Computer Science Engineering, Manipal University Jaipur

E-mail: sandeep.chaurasia@jaipur.manipal.edu

Website:

Research Interests: Computational Learning Theory

Biography

Dr. Sandeep Chaurasia is working as Associate Professor in the department of CSE, School of Computing & I.T. in Manipal University Jaipur. He completed his PhD (Engineering) in 2014 in the area of Supervised Machine Learning and M.Tech in Computer Science in the year 2009. He has done his B.E. in Computer Engineering in the year 2006 from Rajasthan University. He has more than ten years of rich experience in industry, research and academics. He has publications in National and International journals/ conference proceedings. He is also member of reviewer board of various journals and technical program committee of several reputed conferences. He is active member of IEEE, LMCSI. ACM, MIRL, UACEE etc.

Author Articles
An Integrated Perceptron Kernel Classifier for Intrusion Detection System

By Ruby Sharma Sandeep Chaurasia

DOI: https://doi.org/10.5815/ijcnis.2018.12.02, Pub. Date: 8 Dec. 2018

Because of the tremendous growth in the network based services as well as the sharing of sensitive data, the network security becomes a challenging task. The major risk in the network is the intrusion. Among various hardening system, intrusion detection system (IDS) plays a significant role in providing network security. Several traditional techniques are utilized for network security but still they lack in providing security. The major drawbacks of these network security algorithms are inaccurate classification results, increased false alarm rate, etc. to avoid these issues, an Integrated Perceptron Kernel Classifier is proposed in this work. The input raw data are preprocessed initially for the purpose of removing the noisy data as well as irrelevant data. Then the features form the preprocessed data are extracted by clustering it depending up on the Fuzzy C-Mean Clustering. Then the clustered features are extracted by employing the Density based Distance Maximization approach. After this the best features are selected using Modified Ant Colony Optimization by improving the convergence time. Finally the extracted best features are classified for identifying the network traffic as normal and abnormal by introducing an Integrated Perceptron Kernel Classifier. The performance of this framework is evaluated and compared with the existing classifiers such as SVM and PNN. The results prove the superiority of this framework with better classification accuracy.

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