A stacked ensemble learning model for intrusion detection in wireless network

Intrusion detection pretended to be a major technique for revealing the attacks and guarantee the security on the network. As the data increases tremendously every year on the Internet, a single algorithm is not sufficient for the network security. Because, deploying a single learning approach may suffer from statistical, computational and representational issues. To eliminate these issues, this paper combines multiple machine learning algorithms called stacked ensemble learning, to detect the attacks in a better manner than conventional learning, where a single algorithm is used to identify the attacks. The stacked ensemble system has been taken the benchmark data set, NSL-KDD, to compare its performance with other popular machine learning algorithms such as ANN, CART, random forest, SVM and other machine learning methods proposed by researchers. The experimental results show that stacked ensemble learning is a proper technique for classifying attacks than other existing methods. And also, the proposed system shows better accuracy compare to other intrusion detection models.

[1]  Wei Li,et al.  Network Intrusion Detection Based on Random Forest and Support Vector Machine , 2017, 22017 IEEE International Conference on Computational Science and Engineering (CSE) and IEEE International Conference on Embedded and Ubiquitous Computing (EUC).

[2]  Leo Breiman,et al.  Random Forests , 2001, Machine Learning.

[3]  J. Friedman Greedy function approximation: A gradient boosting machine. , 2001 .

[4]  Tohari Ahmad,et al.  Analyzing the Performance of Machine Learning Algorithms in Anomaly Network Intrusion Detection Systems , 2018, 2018 4th International Conference on Science and Technology (ICST).

[5]  Dorothy E. Denning,et al.  An Intrusion-Detection Model , 1987, IEEE Transactions on Software Engineering.

[6]  Mamun Bin Ibne Reaz,et al.  A survey of intrusion detection systems based on ensemble and hybrid classifiers , 2017, Comput. Secur..

[7]  Farrukh Aslam Khan,et al.  Network intrusion detection using hybrid binary PSO and random forests algorithm , 2015, Secur. Commun. Networks.

[8]  G. Usha Devi,et al.  Detecting spams in social networks using ML algorithms - a review , 2018 .

[9]  Javed Akhtar Khan,et al.  A Survey on Intrusion Detection Systems and Classification Techniques , 2016 .

[10]  Shie-Jue Lee,et al.  Network intrusion detection using equality constrained-optimization-based extreme learning machines , 2018, Knowl. Based Syst..

[11]  Miad Faezipour,et al.  Deep and Machine Learning Approaches for Anomaly-Based Intrusion Detection of Imbalanced Network Traffic , 2019, IEEE Sensors Letters.

[12]  Wei-Yang Lin,et al.  Intrusion detection by machine learning: A review , 2009, Expert Syst. Appl..

[13]  Yuefei Zhu,et al.  A Deep Learning Approach for Intrusion Detection Using Recurrent Neural Networks , 2017, IEEE Access.

[14]  Wei Guo,et al.  A RF-PSO Based Hybrid Feature Selection Model in Intrusion Detection System , 2018, 2018 IEEE Third International Conference on Data Science in Cyberspace (DSC).

[15]  Mohammad Zulkernine,et al.  Random-Forests-Based Network Intrusion Detection Systems , 2008, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[16]  C. D. Jaidhar,et al.  Comparative study of Principal Component Analysis based Intrusion Detection approach using machine learning algorithms , 2015, 2015 3rd International Conference on Signal Processing, Communication and Networking (ICSCN).

[17]  Iftikhar Ahmad,et al.  Date of publication xxxx 00, 0000, date of current version xxxx 00, 0000 , 2018 .

[18]  Yi Yi Aung,et al.  An analysis of random forest algorithm based network intrusion detection system , 2017, 2017 18th IEEE/ACIS International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD).

[19]  Anamika Yadav,et al.  Performance analysis of NSL-KDD dataset using ANN , 2015, 2015 International Conference on Signal Processing and Communication Engineering Systems.

[20]  Majd Latah,et al.  Towards an Efficient Anomaly-Based Intrusion Detection for Software-Defined Networks , 2018, IET Networks.

[21]  Kehe Wu,et al.  A Novel Intrusion Detection Model for a Massive Network Using Convolutional Neural Networks , 2018, IEEE Access.

[22]  G. Usha Devi,et al.  Feature extraction using LR-PCA hybridization on twitter data and classification accuracy using machine learning algorithms , 2018, Cluster Computing.

[23]  Anirban Bhowal,et al.  Comparative analysis of machine learning algorithms along with classifiers for network intrusion detection , 2015, 2015 International Conference on Smart Technologies and Management for Computing, Communication, Controls, Energy and Materials (ICSTM).