Traffic modeling and prediction is a vital task for designing efficient resource allocation strategies in telecommunication networks. This is challenging because network traffic data exhibits complex nonlinear spatiotemporal interactions. Moreover, the data can have missing values when traffic statistic collection is unavailable in certain nodes. In this paper, we introduce a graph Gaussian Process (GP) model for this challenging problem. The GP is a Bayesian non-parametric model and highly flexible in capturing complex patterns in the data. Additionally, it provides uncertainty information which can be exploited for robust resource allocation problems. The developed graph GP model is almost free of hyper-parameter tuning, can accurately ca...
Forecasting spatio-temporal data is a challenging task in transportation scenarios involving agents....
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
We develop a probabilistic framework for global modeling of the traf-fic over a computer network. Th...
Traffic forecasting plays a critical role in intelligent transportation systems (ITS) in smart citie...
This paper considers the problem of short-term traffic flow prediction in the context of missing dat...
Wireless traffic prediction is a fundamental enabler to proactive network optimisation in 5G and bey...
This paper proposes a traffic speed prediction framework combining a Convolutional Neural Network (C...
International audienceThe probabilistic forecasting method described in this study is devised to lev...
Traffic control is essential for the achievement of a sustainable and safe mobility. Monitoring syst...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
Forecasting of multivariate time-series is an important problem that has applications in traffic man...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
Autonomous network management is crucial for Fifth Generation (5G) and Beyond 5G (B5G) networks, whe...
Forecasting spatio-temporal data is a challenging task in transportation scenarios involving agents....
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
We develop a probabilistic framework for global modeling of the traf-fic over a computer network. Th...
Traffic forecasting plays a critical role in intelligent transportation systems (ITS) in smart citie...
This paper considers the problem of short-term traffic flow prediction in the context of missing dat...
Wireless traffic prediction is a fundamental enabler to proactive network optimisation in 5G and bey...
This paper proposes a traffic speed prediction framework combining a Convolutional Neural Network (C...
International audienceThe probabilistic forecasting method described in this study is devised to lev...
Traffic control is essential for the achievement of a sustainable and safe mobility. Monitoring syst...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
Forecasting of multivariate time-series is an important problem that has applications in traffic man...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
Dutch freeways suffer from severe congestion during rush hours or incidents. Research shows that 64%...
Autonomous network management is crucial for Fifth Generation (5G) and Beyond 5G (B5G) networks, whe...
Forecasting spatio-temporal data is a challenging task in transportation scenarios involving agents....
BackgroundAccurately predicting mobile network traffic can help mobile network operators allocate re...
We develop a probabilistic framework for global modeling of the traf-fic over a computer network. Th...