TY - JOUR T1 - Scalable Real Time Botnet Detection System for Cyber-Security AU - Vanitha, V. AU - Sumathi, V.P. AU - Arumugam, Sindhu AU - Selvam, Nandhini JO - Asian Journal of Information Technology VL - 15 IS - 4 SP - 670 EP - 675 PY - 2016 DA - 2001/08/19 SN - 1682-3915 DO - ajit.2016.670.675 UR - https://makhillpublications.co/view-article.php?doi=ajit.2016.670.675 KW - Security KW -botnet KW -random forest KW -fuzzy c-means KW -traffic analysis AB - Malicious malware can exploit vulnerabilities in the internet computing environment without the user’s knowledge. Today, different types of malware exist in the Internet. Among them one of the malware is known as botnet which is frequently used for many cyber attacks and crimes in the Internet. The aim of this study is to develop a scalable botnet detection framework which will be able to identify and remove stealthy botnets from the real-world network traffic. ‘Storm’ real time, distributed, reliable, fault-tolerant software is used in this work for analyzing the streams of data. Experimental results show that random forest has higher accuracy rate than fuzzy c-means but clustering algorithm is useful to detect the botnet in real time processing. ER -