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Research of User-Resource Relationship Based on Intelligent Tags in Evolution Network

  • Shan Liu
  • Kun Huang
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 875)

Abstract

In view of the digitization and networking of the current media resources and users, the relationship between users and media resources is studied to realize the maximum effective utilization of media resources and the accurate recommendation of users as well as the more reasonable classification of users and media resources. Based on the attribute tags of users and media resource, we design an evolutionary model that reflects the inner relationship between users and media resource, and study the relevant indicators in the network. This paper mainly uses the modeling and analysis methods of complex networks to design the evolution mechanism and the main structure of the evolution network of user-resource relations. On this basis, we study the inner relationship between the structure and function of the network and provide the foundation for the research and design of various dynamic behaviors and processes in the network. Lay the foundation for the intelligent tag.

Keywords

Media resources Intelligent tags Complex networks 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2018

Authors and Affiliations

  1. 1.Information Engineering SchoolCommunication University of ChinaBeijingChina

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