Abstract

An intrusion detection system is a process which automates analyzing activities in network or a computer system. It is used to detect nasty code, hateful activities, intruders and uninvited communications over the Internet. The general intrusion detection system is struggling with some problems like false positive rate, false negative rate, low classification accuracy and slow speed. Now-a-days, this has turned an attention of many researchers to handle these issues. Recently, ensemble of different base classifier is widely used to implement intrusion detection system. In ensemble method of machine learning, the proper selection of base classifier is a challenging task. In this paper, machine learning ensemble have designed and implemented for the intrusion detection system. The ensemble of Partial Decision Tree and Sequential Minimum optimization algorithm to train support vector machine have used for intrusion detection system. Partial Decision Tree rule learner is simplicity and it generates rules fast. Sequential Minimum optimization algorithm is easy to use and is better scaling with training set size with less computational time. Due to these advantages of both classifiers, they jointly used with different methods of ensemble. We make use of all types of methods of ensemble. The performances of base classifiers have evaluated in term of false positive, accuracy and true positive. Performance results display that proposed majority voting method of ensemble using Partial Decision Tree rule learner and Sequential Minimum optimization algorithm based Support Vector Machine offers highest classification among different ensemble classifiers on training dataset. This method of ensemble exhibits highest true positive and lowest false positive rates. It is also observed that stacking of both PART and SMO exhibits lowest and same classification accuracy on test dataset

Highlights

  • Intrusion detection system is powerful tool which play vital role in protecting the computers and networks

  • The ensemble of Partial Decision Tree (PART) rule learner and SMO based Support Vector Machine base classifiers have used for intrusion detection system

  • PART rule leaner and SMO algorithm based Support Vector Machine classifiers have used for intrusion detection system

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Summary

INTRODUCTION

Intrusion detection system is powerful tool which play vital role in protecting the computers and networks. Now-a-days, soft computing techniques, data mining and machine learning algorithms are mostly used in intrusion detection field. For reduction of bias and variance on different training dataset, ensemble of base classifiers is used. This method is called as hybrid classification. Due to high model building time, most of the existing systems cannot deploy on line To overcome these problems, we have implemented a novel intrusion detection system using Genetic algorithm and ensemble classifiers. The ensemble of PART rule learner and SMO based Support Vector Machine base classifiers have used for intrusion detection system.

LITERATURE SURVEY
Partial Decision Tree as Base Classifier
Sequential Minimum Optimization algorithm to train Support Vector Machine
Proposed Ensemble of base classifiers
EXPERIMENTAL RESULTS
CONCLUSIONS
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