Traffic Flows Forecasting Based on Machine Learning

Author:

Deart Vladimir1,Mankov Vladimir2,Krasnova Irina1

Affiliation:

1. Moscow Technical University of Communications and Informatics, Russia

2. Training Center Nokia, Russia

Abstract

The article aims to develop a model for forecasting the characteristics of traffic flows in real-time based on the classification of applications using machine learning methods to ensure the quality of service. It is shown that the model can forecast the mean rate and frequency of packet arrival for the entire flow of each class separately. The prediction is based on information about the previous flows of this class and the first 15 packets of the active flow. Thus, the Random Forest Regression method reduces the prediction error by approximately 1.5 times compared to the standard mean estimate for transmitted packets issued at the switch interface.

Publisher

IGI Global

Subject

General Computer Science

Reference22 articles.

1. Forecasting 802.11 Traffic Using Seasonal ARIMA Model

2. XGBoost

3. Traffic Data Repository at the WIDE Project.;K.Cho;USENIX Annual Technical Conference, FREENIX Track,2000

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