Title of article :
Application of unsupervised weighting algorithms for identifying important attributes and factors contributing to grain and biological yields of wheat
Author/Authors :
Bijanzadeh، E. نويسنده , , EMAM، Y. نويسنده , , Sadat Ebrahimi، S. E. نويسنده , , Ebrahimi، M. نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی 0 سال 2012
Pages :
7
From page :
111
To page :
117
Abstract :
To identify important attributes/factors that contribute to grain and biological yields of wheat, 9912 sets of diverse data from field studies were extracted, and supervised attribute-weighting models were employed. Results showed that when biological yield was the output, grain yield, nitrogen applied, rainfall, irrigation regime, and organic content were the most important factors/attributes, highlighted by 9, 7, 5, 3 and 3 weighting models, respectively. In contrast, when grain yield was the output, biological yield, location, and genotype were identified by 8, 6, and 5 weighting models, respectively. Also, five other features (cropping system, organic content, 1000-grain weight, spike number m-2 and soil texture) were selected by three models as the most important factors/attributes. Field water status, such as the irrigation regime or the amount of rainfall, was another important factor related to the biological or grain yield of wheat (weight ? 0.5). Our results showed that attribute/factor classification by unsupervised attribute-weighting models can provide a comprehensive view of the important distinguishing attributes/factors that contribute to wheat grain or biological yield. This is the first report on identifying the most important factors/attributes contributing to wheat grain and biological yields-using attribute-weighting algorithms. This study opened a new horizon in wheat production using data mining
Journal title :
Crop Breeding Journal (C. B. Journal)
Serial Year :
2012
Journal title :
Crop Breeding Journal (C. B. Journal)
Record number :
712004
Link To Document :
بازگشت