Publication | Closed Access
Applying deep learning approaches for network traffic prediction
187
Citations
29
References
2017
Year
Unknown Venue
Intelligent Traffic ManagementNetwork FlowsEngineeringMachine LearningData ScienceInternet Traffic AnalysisTraffic PredictionPredictive AnalyticsSubsequent Network TrafficNetwork Traffic PredictionRecurrent UnitComputer ScienceDeep LearningTraffic MonitoringRecurrent Neural Network
Network traffic prediction aims at predicting the subsequent network traffic by using the previous network traffic data. This can serve as a proactive approach for network management and planning tasks. The family of recurrent neural network (RNN) approaches is known for time series data modeling which aims to predict the future time series based on the past information with long time lags of unrevealed size. RNN contains different network architectures like simple RNN, long short term memory (LSTM), gated recurrent unit (GRU), identity recurrent unit (IRNN) which is capable to learn the temporal patterns and long range dependencies in large sequences of arbitrary length. To leverage the efficacy of RNN approaches towards traffic matrix estimation in large networks, we use various RNN networks. The performance of various RNN networks is evaluated on the real data from GÉANT backbone networks. To identify the optimal network parameters and network structure of RNN, various experiments are done. All experiments are run up to 200 epochs with learning rate in the range [0.01-0.5]. LSTM has performed well in comparison to the other RNN and classical methods. Moreover, the performance of various RNN methods is comparable to LSTM.
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