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The Principal Component Analysis and Cluster Analysis of Trace Elements in Gentian

  • Xin Zhao
  • Mingwei Xu
  • Guoqing Sun
  • Yang Jiao
  • Haijiao Yu
  • Quanming Li
  • Guogang Zhao
Conference paper
Part of the IFIP Advances in Information and Communication Technology book series (IFIPAICT, volume 509)

Abstract

In this paper, using principal component analysis and cluster analysis method, combining with the statistics software MATLAB. The Qingyuan rough gentian, Zuojia rough gentian, Zuojia leaf gentiana system clustering analysis of experimental data. Main ingredients swertia glycosides, Swertia bitter glycosides, gentian bitter glycosides and oleanolic acid and ursolic acid, etc. Cluster analysis results showed that the three principal component contribution rate of the Qingyuan rough gentian is 89.24%, the three principal component contribution rate of the Zuojia rough gentian is 89.85%, the three principal component contribution rate of the Zuojia leaf gentian is 93.56%. By cluster analysis to Qingyuan rough gentian, Zuojia rough gentian, Zuojia leaf gentiana aristata 3 groups of data were divided into 6, 5, 4 classes, and determine the appearance characteristics of the high quality gentian, provide the basis for breeding to select high quality gentian.

Keywords

Gentian Principal component analysis System clustering analysis 

Notes

Acknowledgement

The authors sincerely thank many invaluable suggestions. This work was supported financially by the Students’ Innovative Training Program of Jilin Agricultural University (377).

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Copyright information

© IFIP International Federation for Information Processing 2019

Authors and Affiliations

  • Xin Zhao
    • 1
  • Mingwei Xu
    • 2
  • Guoqing Sun
    • 2
  • Yang Jiao
    • 3
  • Haijiao Yu
    • 4
  • Quanming Li
    • 4
  • Guogang Zhao
    • 4
  1. 1.School of Mathematics and Big DataHuizhou UniversityHuizhouChina
  2. 2.College of Information TechnologyJilin Agricultural UniversityChangchunChina
  3. 3.Sixth Middle School in ChangchunChangchunChina
  4. 4.The City College of JLJUChangchunChina

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