Fast and accurate methods for predicting traffic properties and trend are essential for dynamic network resource management and congestion control. With the aim of performing online and feasible prediction of network traffic, this paper proposes a novel time series model, named adaptive autoregressive (AAR). This model is built upon an adaptive memory-shortening technique and an adaptive-order selection method originally developed by this study. Compared to the conventional one-step ahead prediction using traditional Box-Jenkins time series models (e.g. AR, MA, ARMA, ARIMA and ARFIMA), performance results obtained from actual Internet traffic traces have demonstrated that the proposed AAR model is able to support online prediction of dynami...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
In the last decade, real–time audio and video services have gained much popularity, and now occupyin...
A time-series data analysis and prediction tool for learning the network traffic usage data is very ...
Abstract: Problem statement: Network traffic prediction plays a vital role in the optimal resource a...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
Abstract — Short period prediction is a relevant task for many network applications. Tuning the para...
Accurate real-time traffic prediction is required in many networking applications like dynamic resou...
Part 1: Systems, Networks and ArchitecturesInternational audienceInternet traffic prediction is an i...
The technology of computing and network communication is undergoing rapid development, leading to in...
The predictability of network traffic is of significant interest in many domains, including adaptive...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
Abstract—With the development of Internet and computer science, computer network is changing people’...
This paper presents an approach for a network traffic characterization by using statistical techniqu...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
In the last decade, real–time audio and video services have gained much popularity, and now occupyin...
A time-series data analysis and prediction tool for learning the network traffic usage data is very ...
Abstract: Problem statement: Network traffic prediction plays a vital role in the optimal resource a...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
Abstract — Short period prediction is a relevant task for many network applications. Tuning the para...
Accurate real-time traffic prediction is required in many networking applications like dynamic resou...
Part 1: Systems, Networks and ArchitecturesInternational audienceInternet traffic prediction is an i...
The technology of computing and network communication is undergoing rapid development, leading to in...
The predictability of network traffic is of significant interest in many domains, including adaptive...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
Time series data analysis and forecasting tool for studying the data on the use of network traffic i...
Abstract—With the development of Internet and computer science, computer network is changing people’...
This paper presents an approach for a network traffic characterization by using statistical techniqu...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
In the last decade, real–time audio and video services have gained much popularity, and now occupyin...