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Cluster Computing

, Volume 22, Supplement 2, pp 4589–4596 | Cite as

Evaluation system construction of health policy based on system dynamics and complex network

  • Wu YafeiEmail author
Article
  • 89 Downloads

Abstract

In order to improve index planning rationality of health policy evaluation system, a method of health policy system evaluation construction based on system dynamics and complex network has been proposed. Above all, theoretical method of index system construction has been researched and analyzed and it has been evaluated with hierarchy analysis, while core index system has been screened. Besides, health policy evaluation system has been constructed with introducing complex network, at the same time, method of sampling for construction data subset has been conducted for solving problems about large complex network data dimension disaster. And selecting method for cluster center with parallel complex network average is realized in combination with Mapreduce computer model. Eventually, algorithm of Chinese health policy evaluation system construction has been verified and analyzed through empirical analysis.

Keywords

Complex network Health policy System construction Parallel calculation 

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Department of Health ManagementSouthern Medical UniversityGuangzhouChina

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