A Model Study on Emergency Information’s Spread under Mobile Internet Environment

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Abstract:

With public emergencies’ frequent occurrences and mobile internet’s fast developments, emergency information managements under mobile Internet environment become a hotspot of study.This paper applies the complex network theory to the study on emergency information’s spread under mobile internet environment. This paper constructs the emergency information’s spread model with different clustering coefficient under mobile internet environment to study emergency information’s spread trend. The result shows that under mobile internet environment there is high relevance between the emergency information’s spread trend and the topological network’s clustering coefficient. Governments can adjust the clustering coefficient to improve the management of emergency information under mobile internet environment.

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Periodical:

Advanced Materials Research (Volumes 532-533)

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929-933

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June 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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