Implementation and Analysis of Combined Machine Learning Method for Intrusion Detection System

Main Article Content

Bisyron Wahyudi Masduki
Kalamullah Ramli
Hendri Murfi

Abstract

As one of the security components in Network Security Monitoring System, Intrusion Detection System (IDS) is implemented by many organizations in their networks to detect and address the impact of network attacks. There are many machine-learning methods that have been widely developed and applied in the IDS. Selection of appropriate methods is necessary to improve the detection accuracy in the application of machine-learning in IDS. In this research we proposed an IDS that we developed based on machine learning approach. We use 28 features subset without content features of  Knowledge Data Discovery (KDD) dataset to build machine learning model. From our analysis and experiment we get 28 features subset of KDD dataset that are most likely to be applied for the IDS in the real network. The machine learning model based on this 28 features subset obtained 99.9% accuracy for both two-class and multiclass classification. From our experiments using the IDS we have developed show good performance in detecting attacks on real networks.

Article Details

How to Cite
Masduki, B. W., Ramli, K., & Murfi, H. (2022). Implementation and Analysis of Combined Machine Learning Method for Intrusion Detection System. International Journal of Communication Networks and Information Security (IJCNIS), 10(2). https://doi.org/10.17762/ijcnis.v10i2.3375 (Original work published August 5, 2018)
Section
Research Articles
Author Biographies

Bisyron Wahyudi Masduki, Department of Electrical Engineering, Faculty of Engineering, Universitas Indonesia, Indonesia

Bisyron Wahyudi is the Vice Chairman of ID-SIRTII/CC (Indonesia Security Incident Response Team on Internet Infrastructure/Coordination Center). He pursued his postgraduate study in Software Engineering from Institute of Technology Bandung and Université Thomson, France. Now he is a doctoral student at Universitas Indonesia in the field of network security. He is a computer scientist with over twenty years of professional experience in Software development. Broad range Solution Architect with various exposures on enterprise solution development, solution architecture design and solution delivery. He's also been working for more than ten years in the field of network and information security. He is actively involved in several information and network security working groups, workshops, and trainings in the area of cyber security collaboration, capacity building, critical information infrastructure protection, information security standard and compliance, incident handling and CERT/CSIRT establishment & management.

Kalamullah Ramli, Department of Electrical Engineering, Faculty of Engineering, Universitas Indonesia, Indonesia

ID#Scopus: 55909526900h-index Scopus: 4

Hendri Murfi, Department of Mathematics, Faculty of Science, Universitas Indonesia, Indonesia