Predicting End-to-end Network Load

ICMLA(2010)

Cited 2|Views26
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Abstract
Due to their limited and fluctuating bandwidth, mobile ad hoc networks (MANETs) are inherently resource-constrained. As traffic load increases, we need to decide when to throttle the traffic to maximize user satisfaction while keeping the network operational. The state-of-the-art for making these decisions is based on network measurements and so employs a reactive approach to deteriorating network state by reducing the amount of traffic admitted into the network. However, a better approach is to avoid congestion before it occurs by predicting future network traffic using user and application information from the overlaying social network. We use machine learning methods to predict the source and destination of near future traffic load.
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Key words
reactive approach,traffic load increase,future network traffic,network measurement,better approach,user satisfaction,overlaying social network,network state,application information,near future traffic load,predicting end-to-end network load,communication networks,manet,learning artificial intelligence,mobile ad hoc network,machine learning,data models,social network,predictive models,classification,regression,mobile ad hoc networks
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