Network Intrusion Detection System Using Machine Learning

Authors

  • Shailaja Jadhav  Department of Computer Engineering, Marathwada Mitra Mandal’s College of Engineering, Karve Nagar, Pune, Maharashtra, India
  • Vinaya Bhalerao  Department of Computer Engineering, Marathwada Mitra Mandal’s College of Engineering, Karve Nagar, Pune, Maharashtra, India
  • Varsha Yadav  Department of Computer Engineering, Marathwada Mitra Mandal’s College of Engineering, Karve Nagar, Pune, Maharashtra, India
  • Snehal Kamble  Department of Computer Engineering, Marathwada Mitra Mandal’s College of Engineering, Karve Nagar, Pune, Maharashtra, India
  • Bhavana Shinde  Department of Computer Engineering, Marathwada Mitra Mandal’s College of Engineering, Karve Nagar, Pune, Maharashtra, India

DOI:

https://doi.org//10.32628/CSEIT22819

Keywords:

Support Vector Machine (SVM), Naive bayes, Dynamic Complex types of security.

Abstract

The "Network Intrusion Detection System Based on Machine Learning Algorithms" is a component of software that invigilate a network of computers detecting potentially hazardous activities like capturing sensitive secret data or corrupting/hacking network protocols. Today's IDS techniques are incapable of doing this cope with the many sorts of security cyber-attacks on computer networks that are dynamic and complex. The effectiveness of an intruder the precision of detection is crucial. Intrusion detection accuracy must be able to reduce the number of false alarms and raise the pace at which alerts are detected. Various methods have been used to escalate the performance. In recent studies, approaches have been applied. The main function of this group is to analyze large amounts of network traffic data system for detecting intrusions to address this, a well-organized categorization system is necessary issue. Machine Learning methods like Support Vector Machine (SVM) and Na?ve bayes are applied for evaluation of IDS. NSL-KDD knowledge discovery data set is used, their accuracy and misclassification rate get calculated.

References

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Published

2022-02-28

Issue

Section

Research Articles

How to Cite

[1]
Shailaja Jadhav, Vinaya Bhalerao, Varsha Yadav, Snehal Kamble, Bhavana Shinde, " Network Intrusion Detection System Using Machine Learning, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 8, Issue 1, pp.74-81, January-February-2022. Available at doi : https://doi.org/10.32628/CSEIT22819