Network traffic is a typical nonlinear time series. As such, traditional linear and nonlinear models are inadequate to describe the multi-scale characteristics of traffic, thus compromising the prediction accuracy. Therefore, the research to date has tended to focus on hybrid models rather than the traditional linear and non-linear ones. Generally, a hybrid model adopts two or more methods as combined modelling to analyze and then predict the network traffic. Against this backdrop, this paper will review past research conducted on hybrid network traffic prediction models. The review concludes with a summary of the strengths and limitations of existing hybrid network prediction models which use optimization and decomposition techniques, resp...
The amount of data moving across the network at any given time is referred to as network traffic. It...
Network traffic matrix prediction is a methodology of predicting network traffic behavior ahead of t...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
Network traffic is a typical nonlinear time series. As such, traditional linear and nonlinear models...
Network traffic prediction performs a main function in characterizing network community performance....
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The paper studies efficient modeling and prediction of daily traffic patterns in transport telecommu...
The demand for high steady state network traffic utilization is growing exponentially. Therefore, tr...
A database that records average traffic speeds measured at five-minute intervals for all the links i...
With the rapid development of the internet it has converted the world into a global village and now ...
Prediction of Internet traffic time series data (TSD) is a challenging research problem, owing to th...
The predictability of network traffic is of significant interest in many domains, including adaptive...
Because of the urbanization trend and the development of technology and economy, transportation is b...
Nowadays, due to the exponential and continuous expansion of new paradigms such as Internet of Thing...
The amount of data moving across the network at any given time is referred to as network traffic. It...
Network traffic matrix prediction is a methodology of predicting network traffic behavior ahead of t...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
Network traffic is a typical nonlinear time series. As such, traditional linear and nonlinear models...
Network traffic prediction performs a main function in characterizing network community performance....
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The paper studies efficient modeling and prediction of daily traffic patterns in transport telecommu...
The demand for high steady state network traffic utilization is growing exponentially. Therefore, tr...
A database that records average traffic speeds measured at five-minute intervals for all the links i...
With the rapid development of the internet it has converted the world into a global village and now ...
Prediction of Internet traffic time series data (TSD) is a challenging research problem, owing to th...
The predictability of network traffic is of significant interest in many domains, including adaptive...
Because of the urbanization trend and the development of technology and economy, transportation is b...
Nowadays, due to the exponential and continuous expansion of new paradigms such as Internet of Thing...
The amount of data moving across the network at any given time is referred to as network traffic. It...
Network traffic matrix prediction is a methodology of predicting network traffic behavior ahead of t...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...