A Signature Based Intrusion Detection System with HPFSM and Fuzzy Based Classification Method (IDSFSC)

Authors

  • S. Latha Assistant Professor,Department of Computer Science, Cauvery College for Women, Tiruchirapalli, Tamil Nadu, India
  • Sinthu Janita Prakash Head & Professor, PG & Research, Department of Computer Science, Cauvery College for Women, Tiruchirapalli, Tamil Nadu, India

DOI:

https://doi.org/10.51983/ajeat-2019.8.2.1144

Keywords:

Feature Selection, Intrusion Detection System, Association Rule Mining, Apriori Algorithm, Artificial Neural Network, Aho-Corasick Pattern Matching Algorithm, Gain Ratio, Chi-Square Analysis

Abstract

Securing a network from the attackers is a challenging task at present as many users involve in variety of computer networks. To protect any individual host in a network or the entire network, some security system must be implemented. In this case, the Intrusion Detection System (IDS) is essential to protect the network from the intruders. The IDS has to deal with a lot of network packets with different characteristics. A signature-based IDS is a potential tool to understand former attacks and to define suitable method to conquest it in variety of applications. This research article elucidates the objective of IDS with a mechanism which combines the network and host-based IDS. The benchmark dataset for DARPA is considered to generate the IDS mechanism. In this paper, a frame work IDSFSC – signature-based IDS with high pertinent feature selection method is framed. This frame work consists of earlier proposed Feature Selection Method (HPFSM with Enhanced Artificial Neural Network (EANN) for classification of nodes or packets in the network, then the signatures or attack rules are configured by implementing Association Rule mining algorithm and finally the rules are restructured using a pattern matching algorithm-Aho-Corasick to ease the rule checking. The metrics classification accuracy, False Positive Rate (FPR) and Precision are checked and proved the proposed frame work’s efficiency.

References

B. Sen, et al., "A Trust-Based Intrusion Detection System for Mitigating Blackhole Attacks in MANET," Advanced Computational and Communication Paradigms, vol. 706, pp. 765-775, 2018.

H. Min, et al., "Pattern Matching Based Sensor Identification Layer for an Android Platform," Wireless Communications and Mobile Computing, vol. 2018, Oct. 2018.

H. Park, et al., "Hybrid Sensor Network-Based Indoor Surveillance System for Intrusion Detection," Symmetry, vol. 10, no. 6, May 2018.

N. Moustafa, G. Creech, and J. Slay, "Anomaly Detection System Using Beta Mixture Models and Outlier Detection," Progress in Computing, Analytics and Networking, vol. 710, pp. 125-135, April 2018.

P. Deshpande, et al., "HIDS: A host-based intrusion detection system for cloud computing environment," International Journal of System Assurance Engineering and Management, vol. 9, no. 3, pp. 567-576, June 2018.

C. Kuo, et al., "Design and Implementation of a Host-Based Intrusion Detection System for Linux-Based Web Server," in International Conference on Intelligent Information Hiding and Multimedia Signal Processing, Springer, Cham, vol. 110, Nov. 2018.

J. Song, et al., "Hybrid Feature Selection for Supporting Light Weight Intrusion Detection Systems," IOP Conference Series, Journal of Physics, Conference Series, vol. 887, pp. 1-7, Aug. 2017.

M. I. Ahmed, et al., "Information based feature selection for intrusion detection systems," International Journal of Scientific & Engineering Research, vol. 8, no. 7, pp. 2362-2366, July 2017.

L. Li, et al., "Towards Effective Network Intrusion Detection: A Hybrid Model Integrating Gini Index and GBDT with PSO," Journal of Sensors, vol. 2018, Mar. 2018.

M. R. G. Raman, et al., "A hypergraph and arithmetic residue-based probabilistic neural network for classification in intrusion detection systems," Neural Networks, vol. 92, pp. 89-97, Aug. 2017.

Y. Wang, et al., "A fog-based privacy-preserving approach for distributed signature-based intrusion detection," Journal of Parallel and Distributed Computing, vol. 122, pp. 26-35, Dec. 2018.

Y. Cohen, et al., "Detection of malicious webmail attachments based on propagation patterns," Knowledge-Based Systems, vol. 141, pp. 67-79, Feb. 2018.

S. Latha and S. J. Prakash, "HPFSM-A high pertinent feature selection mechanism for intrusion detection system," International Journal of Pure and Applied Mathematics, vol. 118, no. 9, pp. 77-83, 2018.

L. Mehrotra, et al., "A Data Classification Model: For Effective Classification of Intrusion in an Intrusion Detection System Based on Decision Tree Learning Algorithm," in Information and Communication Technology for Sustainable Development, Springer, Singapore, vol. 9, pp. 61-66, Nov. 2017.

M. Sathya and K. Thangadurai, "Association Rule Generation Using E-ACO Algorithm," International Journal of Control Theory and Applications, vol. 27, no. 9, pp. 513-521, 2016.

K. Shim, et al., "Effective behavior signature extraction method using sequence pattern algorithm for traffic identification," International Journal of Network Management, vol. 28, no. 2, pp. 1-7, Aug. 2017.

S. K. Sahu, "A Detail Analysis on Intrusion Detection Datasets," in IEEE International Advance Computing Conference (IACC), pp. 1348-1353, Feb. 2014.

Z. Dewa and L. A. Maglaras, "Data Mining and Intrusion Detection Systems," International Journal of Advanced Computer Science and Applications, vol. 7, no. 1, pp. 62-71, Jan. 2016.

Downloads

Published

25-04-2019

How to Cite

Latha, S., & Prakash, S. J. (2019). A Signature Based Intrusion Detection System with HPFSM and Fuzzy Based Classification Method (IDSFSC). Asian Journal of Engineering and Applied Technology, 8(2), 23–29. https://doi.org/10.51983/ajeat-2019.8.2.1144