Study on Knowledge Spillover in Supply Chain-Style Industrial Cluster Based on Multi-Agent

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According to social network relations strength, enterprises in industrial cluster supply chains are classified and the structure of supply chain style-industrial cluster is description. The enterprises selected mechanism and the knowledge flow mechanism in industrial cluster supply chain is designed, and then the simulation based on multi-agent are carried out. According to the simulation, the process of process of knowledge spillover in industrial cluster supply chain is draw and various enterprises influence on knowledge spillover in industrial cluster is analyzed.

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2417-2422

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June 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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