DocumentCode :
2843024
Title :
Leveraging social network for predicting demand and estimating available resources for communication network management
Author :
Vashist, Akshay ; Mau, Siun-Chuon ; Poylisher, Alexander ; Chadha, Ritu ; Ghosh, Abhrajit
Author_Institution :
Appl. Res., Telcordia Technol., Piscataway, NJ, USA
fYear :
2011
fDate :
23-27 May 2011
Firstpage :
547
Lastpage :
554
Abstract :
Computer networks exist to provide a communication medium for social networks, and information from social networks can help in estimating their communication needs. Despite this, current network management ignores the information from social networks. On the other hand, due to their limited and fluctuating bandwidth, mobile ad hoc networks are inherently resource-constrained. As traffic load increases, we need to decide when and how 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 (a) monitoring the network for early onset signals of congestive phase transition, and (b) predicting future network traffic using user and application information from the overlaying social network. We use machine learning methods to predict the amount of traffic load that can be admitted without transitioning the network to a congestive phase and to predict the source and destination of near future traffic load. These two predictions when fed into an admission control component ensure better management of constrained network resources while maximizing the quality of user experience.
Keywords :
computer network management; learning (artificial intelligence); social networking (online); telecommunication traffic; admission control component; communication network management; computer networks; congestive phase transition; constrained network resources; demand prediction; machine learning methods; mobile ad hoc networks; network measurements; quality of user experience; resource estimation; social network; traffic load; user satisfaction; Ad hoc networks; Mobile computing; Monitoring; USA Councils; Communication Networks Resource Utilization and Management; End-to-end Network Load Prediction; Machine Learning; Network Phase Transition; QoS; Social Network; Support Vector Machine;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Integrated Network Management (IM), 2011 IFIP/IEEE International Symposium on
Conference_Location :
Dublin
Print_ISBN :
978-1-4244-9219-0
Electronic_ISBN :
978-1-4244-9220-6
Type :
conf
DOI :
10.1109/INM.2011.5990558
Filename :
5990558
Link To Document :
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