Revealing Influenced Selected Feature for P2P Botnet Detection

Main Article Content

Wan Ahmad Ramzi Wan Yusuf
Faizal M. A, Rudy Fadhlee M. D, Nur Hidayah M. S

Abstract

P2P botnet has become a serious security threat for computer networking systems. Botnet attack causes a great financial loss and badly impact the information and communication technology (ICT) system. Current botnet detection mechanisms have limitations and flaws to deal with P2P botnets which famously known for their complexity and scalable attack. Studies show that botnets behavior can be detected based on several detection features. However, some of the feature parameters may not represent botnet behavior and may lead to higher false alarm detection rate. In this paper, we reveal selected feature that influences P2P botnets detection. The result obtained by selecting features shows detection attack rate of 99.74%.

Article Details

How to Cite
Wan Yusuf, W. A. R., & Nur Hidayah M. S, F. M. A. R. F. M. D. (2017). Revealing Influenced Selected Feature for P2P Botnet Detection. International Journal of Communication Networks and Information Security (IJCNIS), 9(3). https://doi.org/10.17762/ijcnis.v9i3.2927
Section
Research Articles
Author Biography

Wan Ahmad Ramzi Wan Yusuf, UNIVERSITI TEKNIKAL MALAYSIA MELAKA

Name :                          Wan Ahmad Ramzi Bin                                               Wan YusufGraduated University:     Universiti Teknikal                                                     Malaysia MelakaField of Degree:              Master of Computer                                                 Science (Internetworking)Current position:             Lecturer at Jasin                                                       Community College,                                                 Melaka Malaysiascientific interests:          Networking, P2P/http                                               Botnet,Malware, Security, Logistic Regression, Data mining, Feature Selection, Statistical Approach.