Presentation 2005-10-21
QSR Data Mining System for Dynamic Route Selection in Multimedia Communication Networks
Jing HE, Wuyi YUE, Yong SHI,
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Abstract(in English) This paper presents a new data mining system for quality of service capable switch-router (QSR) called QSR data mining system. This QSR data mining system is used for dynamic route selection of multimedia communication networks (MCNs). The QSR data mining system dynamically chooses the routes for multi-traffic flow according to not only different performance requirements, but also the existent resource status of MCNs. In MCNs the principles of routers and transfer control protocol/internet protocol (TCP/IP) are used. The principles of data mining system, quality of service (QoS) integrated performance evaluation, route mechanism, back propagation neural network (BPNN) and so on are combined in the QSR data mining system. The real-time data experiments of the QSR data mining system for MCNs are used to test the effectiveness of the data Mining system.
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Keyword(in English) Data Mining / Multimedia Communication Networks / Route Selection / Integrated Performance Evaluation / Back Propagation Neural Network
Paper # AI2005-17
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Conference Information
Committee AI
Conference Date 2005/10/14(1days)
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Registration To Artificial Intelligence and Knowledge-Based Processing (AI)
Language ENG
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) QSR Data Mining System for Dynamic Route Selection in Multimedia Communication Networks
Sub Title (in English)
Keyword(1) Data Mining
Keyword(2) Multimedia Communication Networks
Keyword(3) Route Selection
Keyword(4) Integrated Performance Evaluation
Keyword(5) Back Propagation Neural Network
1st Author's Name Jing HE
1st Author's Affiliation Institute of Intelligent Information and Communication Technology Konan University:Chinese Academy of Sciences Research Center on Data Technology and Knowledge Economy()
2nd Author's Name Wuyi YUE
2nd Author's Affiliation Department of Information Science and Systems Engineering Konan University
3rd Author's Name Yong SHI
3rd Author's Affiliation Chinese Academy of Sciences Research Center on Data Technology and Knowledge Economy
Date 2005-10-21
Paper # AI2005-17
Volume (vol) vol.105
Number (no) 361
Page pp.pp.-
#Pages 6
Date of Issue