Network Traffic Classification Using Correlation Information - 2013 PROJECT TITLE : Network Traffic Classification Using Correlation Information - 2013 ABSTRACT: Traffic classification has wide applications in network management, from security monitoring to quality of service measurements. Recent research tends to apply Machine Learning techniques to flow statistical feature based classification methods. The nearest neighbor (NN)-based method has exhibited superior classification performance. It also has several important advantages, such as no requirements of training procedure, no risk of overfitting of parameters, and naturally being able to handle a huge number of classes. However, the performance of NN classifier can be severely affected if the size of training data is small. In this paper, we propose a novel nonparametric approach for traffic classification, which can improve the classification performance effectively by incorporating correlated information into the classification process. We analyze the new classification approach and its performance benefit from both theoretical and empirical perspectives. A large number of experiments are carried out on two real-world traffic data sets to validate the proposed approach. The results show the traffic classification performance can be improved significantly even under the extreme difficult circumstance of very few training samples. Did you like this research project? To get this research project Guidelines, Training and Code... Click Here facebook twitter google+ linkedin stumble pinterest Network Assisted Mobile Computing with Optimal Uplink Query Processing - 2013 Optimal Content Downloading in Vehicular Networks - 2013