Litcius/Paper detail

Short term prediction of wireless traffic based on tensor decomposition and recurrent neural network

Tao Deng, Mengxuan Wan, Kaiwen Shi, Ling Zhu, Xichen Wang, Xuchu Jiang

2021SN Applied Sciences22 citationsDOIOpen Access PDF

Abstract

Abstract This paper proposes a wireless network traffic prediction model based on Bayesian Gaussian tensor decomposition and recurrent neural network with rectified linear unit (BGCP-RNN-ReLU model), which can effectively predict the changes in the upstream and downstream network traffic in a short period of time in the future. The research is divided into two parts: (i) The missing observations are imputed by an algorithm based on Bayesian Gaussian tensor decomposition. (ii) The recurrent neural network is used to forecast the true observations only rather than both true and estimated observations. The results show that, compared with other combined models of missing data imputation and neural networks, the BGCP-RNN-ReLU model proposed in this paper has the smallest prediction error for both the upstream and downstream traffic. The new model achieves better forecasting precision, and thus can help to regulate the load of communication station to reduce resource consumption. Highlights The problem of forecasting wireless network traffic with missing values is divided in two stages to handle. A newly propose d method can more efficiently impute missing values in wireless network traffic data. Simple recurrent neural network obtains better prediction performance than other complex networks.

Topics & Concepts

Computer scienceRecurrent neural networkMissing dataArtificial neural networkImputation (statistics)Data miningTensor decompositionWireless networkGaussianArtificial intelligenceMachine learningWirelessTensor (intrinsic definition)MathematicsQuantum mechanicsTelecommunicationsPhysicsPure mathematicsTensor decomposition and applicationsTraffic Prediction and Management TechniquesAdvanced Adaptive Filtering Techniques