e-ISSN : 0975-4024 p-ISSN : 2319-8613   
CODEN : IJETIY    

International Journal of Engineering and Technology

Home
IJET Topics
Call for Papers 2021
Author Guidelines
Special Issue
Current Issue
Articles in Press
Archives
Editorial Board
Reviewer List
Publication Ethics and Malpractice statement
Authors Publication Ethics
Policy of screening for plagiarism
Open Access Statement
Terms and Conditions
Contact Us

ABSTRACT

ISSN: 0975-4024

Title : Active Build-Model Random Forest Method for Network Traffic Classification
Authors : Alhamza Munther, Rozmie Razif, Shahrul Nizam, Naseer Sabri, Mohammed Anbar
Keywords : Network Traffic Classification, Machine learning, Supervised Learning, Random Forests Algorithm
Issue Date : Apr - May 2014
Abstract :
Network traffic classification continues to be an interesting subject among numerous networking communities. This method introduces multi-beneficial solutions in different avenues, such as network security, network management, anomaly detection, and quality-of-service. In this paper, we propose a supervised machine learning method that efficiently classifies different types of applications using the Active Build-Model Random Forest (ABRF) method. This method constructs a new build model for the original Random Forest (RF) method to decrease processing time. This build model includes only the active trees (i.e., trees with high accuracy), whereas the passive trees are excluded from the forest. The passive trees were excluded without any negative effect on classification accuracy. Results show that the ABRF method decreases the processing time by up to 37.5% compared with the original RF method. Our model has an overall accuracy of 98.66% based on the benchmark dataset considered in this paper.
Page(s) : 796-804
ISSN : 0975-4024
Source : Vol. 6, No.2