Repository logoRepository logoRepository logoRepository logo
Repository logoRepository logoRepository logoRepository logo
  • Communities & Collections
  • Research Outputs
  • Employees
  • AAAHigh contrastHigh contrast
    EN PL
    • Log In
      Have you forgotten your password?
AAAHigh contrastHigh contrast
EN PL
  • Log In
    Have you forgotten your password?
  1. Home
  2. Bibliografia UPP
  3. Bibliografia UPP
  4. Prediction of Grain Yield in Wheat by CHAID and MARS Algorithms Analyses
 
Full item page
Options

Prediction of Grain Yield in Wheat by CHAID and MARS Algorithms Analyses

Type
Journal article
Language
English
Date issued
2023
Author
Demirel, Fatih
Eren, Baris
Yilmaz, Abdurrahim
Türkoğlu, Aras
Haliloğlu, Kamil
Niedbała, Gniewko 
Bujak, Henryk
Jamshidi, Bita
Pour-Aboughadareh, Alireza
Bocianowski, Jan 
Nowosad, Kamila
Faculty
Wydział Inżynierii Środowiska i Inżynierii Mechanicznej
Wydział Rolnictwa, Ogrodnictwa i Biotechnologii
Journal
Agronomy
ISSN
2073-4395
DOI
10.3390/agronomy13061438
Web address
http://www.mdpi.com/2073-4395/13/6/1438
Volume
13
Number
6
Pages from-to
art. 1438
Abstract (EN)
Genetic information obtained from ancestral species of wheat and other registered wheat has brought about critical research, especially in wheat breeding, and shown great potential for the development of advanced breeding techniques. The purpose of this study was to determine correlations between some morphological traits of various wheat (Triticum spp.) species and to demonstrate the application of MARS and CHAID algorithms to wheat-derived data sets. Relationships among several morphological traits of wheat were investigated using a total of 26 different wheat genotypes. MARS and CHAID data mining methods were compared for grain yield prediction from different traits using cross-validation. In addition, an optimal CHAID tree structure with minimum RMSE was obtained and cross-validated with nine terminal nodes. Based on the smallest RMSE of the cross-validation, the eight-element MARS model was found to be the best model for grain yield prediction. The MARS algorithm proved superior to CHAID in grain yield prediction and accounted for 95.7% of the variation in grain yield among wheats. CHAID and MARS analyses on wheat grain yield were performed for the first time in this research. In this context, we showed how MARS and CHAID algorithms can help wheat breeders describe complex interaction effects more precisely. With the data mining methodology demonstrated in this study, breeders can predict which wheat traits are beneficial for increasing grain yield. The adaption of MARS and CHAID algorithms should benefit breeding research.
Keywords (EN)
  • morphological characterization

  • plant breeding

  • prediction

  • selection

License
cc-bycc-by CC-BY - Attribution
Open access date
May 23, 2023
Fundusze Europejskie
  • About repository
  • Contact
  • Privacy policy
  • Cookies

Copyright 2025 Uniwersytet Przyrodniczy w Poznaniu

DSpace Software provided by PCG Academia