A time-series data analysis and prediction tool for learning the network traffic usage data is very important in order to ensure an acceptable and a good quality of network services can be provided to the organization (e.g., university). This paper presents the modeling using a nonlinear autoregressive with eXogenous input (NARX) algorithm for predicting network traffic datasets. The best performance of NARX model, based on the architecture 189:31:94 or 60%:10%:30%, with delay value of 5, is able to produce a pretty good with Mean Squared Error of 0.006717 with the value of correlation coefficient, r, of 0.90764 respectively. In short, the NARX technique has been proven to learn network traffic effectively with an acceptable predictive accu...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
The number of users and their network utilization will enumerate the traffic of the network. The acc...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
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...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Fast and accurate methods for predicting traffic properties and trend are essential for dynamic netw...
International audienceNonlinear autoregressive moving average with exogenous inputs (NARMAX) models ...
The technology of computing and network communication is undergoing rapid development, leading to in...
This paper presents an approach for a network traffic characterization by using statistical techniqu...
Abstract — Short period prediction is a relevant task for many network applications. Tuning the para...
Theses deals with network traffic modeling focused on elaboration by time series analysis. The natur...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The paper presents the results of building neural network predictive models of the occupancy of the ...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
The number of users and their network utilization will enumerate the traffic of the network. The acc...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
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...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Time series network traffic analysis and forecasting are important for fundamental to many decision-...
Fast and accurate methods for predicting traffic properties and trend are essential for dynamic netw...
International audienceNonlinear autoregressive moving average with exogenous inputs (NARMAX) models ...
The technology of computing and network communication is undergoing rapid development, leading to in...
This paper presents an approach for a network traffic characterization by using statistical techniqu...
Abstract — Short period prediction is a relevant task for many network applications. Tuning the para...
Theses deals with network traffic modeling focused on elaboration by time series analysis. The natur...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
The paper presents the results of building neural network predictive models of the occupancy of the ...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
The number of users and their network utilization will enumerate the traffic of the network. The acc...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...