A Novel Semi-Supervised Machine Learning Technique for Real-Time Network Traffic Classifications

Abstract

Traffic classification technique is an essential tool for network and system security in the complex environments such as cloud computing based environment. The state-of-the-art traffic classification methods aim to take the advantages of flow statistical features and machine learning techniques, however the classification performance is severely affected by limited supervised information and unknown applications. In unsupervised methods, different group of similar items called clusters are generated, but these clusters are need to be identified. For this we need some additional supervised information. In Classifier, a pre-labeled set of training instances are used to train the classifier. To make an accurate classifier this set of pre-labeled instances must be large, but it is impossible since new applications are emerging day by day. Also supervised method never detects unknown flows or intrusions. To tackle these problems, I designed a novel semi-supervised approach that integrates the advantages of both supervised and semi-supervised methods. This technique is applied over the real-time data to simulate the proper behavior of this new methodology.

Authors and Affiliations

Niyas N

Keywords

Related Articles

Survey on Clustering Techniques of Data Mining

The goal of this survey is to provide a comprehensive review of different clustering techniques in data mining. Data mining refers to extracting useful information from vast amounts of data. It is the process of discover...

A Novel Approach to Recognize the off-line Handwritten Numerals using MLP and SVM Classifiers

This paper presents a new approach to off-line handwritten numeral recognition. Recognition of handwritten numerals has been one of the most challenging task in pattern recognition. Recognition of handwritten numerals po...

Preventing mitm attack in simple secure pairing in Bluetooth

Secure simple pairing has been adopted by Bluetooth version “Bluetooth 2.1+EDR(ENHANCED DATA RATE).It should be noted that for establishing Bluetooth connection that uses Diffie hellman public cryptography in its commu...

Technical Review of Comparative Study on Different Algorithms of Image Inpainting 

Image inpainting is the technique of restoring the lost or damaged regions or modifying the image contents imperceptibly. Image inpainting can be used to fill in the missing area in an image which is visible to human eye...

Survey on Energy-Based Geographic Routing Protocols and Position Update Strategies in Ad-Hoc Networks

Mobile Ad-hoc Network (MANET) is a wireless network with no infrastructure, used in vital places such as battle fields, disaster areas, remote areas etc. This emergency aiding network is formed on-demand by mobile nodes...

Download PDF file
  • EP ID EP99795
  • DOI -
  • Views 106
  • Downloads 0

How To Cite

Niyas N (2014). A Novel Semi-Supervised Machine Learning Technique for Real-Time Network Traffic Classifications. International Journal of Computer Science & Engineering Technology, 5(6), 702-706. https://europub.co.uk/articles/-A-99795