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A Framework Design of National Healthy Diet Monitoring System

  • Lei Chen
  • Xiao-Qian Ma
  • Wei ShangEmail author
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11924)

Abstract

Proper diet is one of the most important prerequisites for people’s health. Resident nutrition and diet building are crucial to the success of national health program of China in its new stage of development. Although there has been numerous research on dietary and its relation of health, there is a lack of overall vision of the current dietary situations in China. In this paper, a national health diet monitoring system is proposed based on the national nutrition survey and the Internet nutrition diet related data, using the text knowledge discovery method. The purpose of the proposed framework is to find out the current situation of diet and nutrition of national residents, monitor the dietary purchase, dietary habits and changes of residents, and provide decision-making support for the formulation of relevant policies and the dietary guidance and improvement of residents.

Keywords

Nutrition and health Decision support System design 

Notes

Acknowledgement

This project is supported by the Key Project of Chinese Academy of Sciences (No. KJZD-EW-G20), Projects of Social Science Program of Beijing Education Commission (No. SM201810037001 and SM201910037004) and Social Beijing Social Science Foundation (No. 18GLB022).

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Beijing Wuzi UniversityBeijingChina
  2. 2.Academy of Mathematics and Systems ScienceChinese Academy of SciencesBeijingChina

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