Learning approaches to support dynamics in communication networks

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Learning approaches to support dynamics in communication networks

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dc.contributor.author Abdelhamid, Mellouk
dc.contributor.author Saïd, Hoceïni
dc.contributor.author Saida, Ziane
dc.contributor.author Malika, Bourennane
dc.date.accessioned 2011-04-21T07:41:23Z
dc.date.available 2011-04-21T07:41:23Z
dc.date.issued 2008
dc.identifier.citation VNU Journal of Science, Natural Sciences and Technology 24 (2008) 147-161 vi
dc.identifier.uri http://hdl.handle.net/123456789/1926
dc.description.abstract In the context of modern high-speed communication networks, decision reactivity is often complicated by the notion of guaranteed Quality of Service (QoS), which can either be related to time, packet loss or bandwidth requirements: constraints related to various types of QoS make some algorithms not acceptable. Due to emerging real-time and multimedia applications, efficient routing of information packets in dynamically changing communication network requires that as the load levels, traffic patterns and topology of the network change, the decision policy also adapts. We focused in this paper on QoS based mechanisms by developing a neuro-dynamic programming to construct dynamic state-dependent policies. In this paper, we present an accurate description of the current state- of-the-art and give an overview of our work in the use of reinforcement learning concepts focused on communications networks. We focus our attention by developing a system based on this paradigm and study the use of reinforcement learning approaches in three different communication networking domains: wired networks, mobile ad hoc networks, and packet router’s scheduling networks. vi
dc.description.sponsorship Quỹ Giáo dục Cao học Hàn Quốc (the Korea Foundation for Advanced Studies) vi
dc.language.iso en vi
dc.subject Self-Depedent Mechanism Decision vi
dc.subject Quality of Service based Routing vi
dc.subject Multi Path Routing vi
dc.subject Dynamic Networks vi
dc.subject Reinforcement Learning vi
dc.subject Adaptive Scheduling vi
dc.title Learning approaches to support dynamics in communication networks vi
dc.type Working Paper vi

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