The analysis of spring wheat productivity by the method of principal component

The work deals with the use of the factor analysis to reduce the importance of factors affecting spring wheat productivity. To carry out the analysis among eight most affecting on crop productivity factors we used the dataset of 32 years. All the dataset has been pre-normalized, being centered and p...

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Main Authors: R. I. Ibyatov, F. Sh. Shaykhutdinov, A. A. Valiev
Format: Article
Language:Russian
Published: Federal State Budgetary Scientific Institution “Agricultural Research Center “Donskoy”" 2018-05-01
Series:Зерновое хозяйство России
Subjects:
Online Access:https://www.zhros.ru/jour/article/view/41
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spelling doaj-3ebb7ddec3a145e4abbe7e39d1ca68712020-11-25T02:05:25ZrusFederal State Budgetary Scientific Institution “Agricultural Research Center “Donskoy”"Зерновое хозяйство России2079-87252079-87332018-05-0102172241The analysis of spring wheat productivity by the method of principal componentR. I. Ibyatov0F. Sh. Shaykhutdinov1A. A. Valiev2ФГБОУ ВО «Казанский государственный аграрный университет»ФГБОУ ВО «Казанский государственный аграрный университет»ФГБОУ ВО «Казанский государственный аграрный университет»The work deals with the use of the factor analysis to reduce the importance of factors affecting spring wheat productivity. To carry out the analysis among eight most affecting on crop productivity factors we used the dataset of 32 years. All the dataset has been pre-normalized, being centered and presented in tabular form. Eight principal components were calculated, and the factor loadings were determined. According to the factor loadings it has been decided to take four principal components describing 84% of general dispersion. Each principal component has been presented as a linear combination of factor loadings and factors. The use of principal components allowed reducing the size of initial dataset from eight factors to four ones. The obtained information has been given in the space of principal components. The new coordinates of the experimental dataset on spring wheat productivity has been estimated by the received interdependences. The initial dataset has been given in a graphic form to search latent interdependences among factors. The number of diagrams in four principal components is six variables in a binary space and four ones in tree-dimensional space. It has been given a diagram of the data according to the first and the fourth principal component. The location of the points shows that the largest value of kernel weight is connected with high indexes of gluten content. It has been constructed a model on the basis of neural network (multiclass perceptron) with one input, one output and one latent layer. The neural network has been preliminary studied according to initial dataset and checked for adequacyhttps://www.zhros.ru/jour/article/view/41spring wheatfactor analysisprincipal componentvisualizing of datasetneural net model
collection DOAJ
language Russian
format Article
sources DOAJ
author R. I. Ibyatov
F. Sh. Shaykhutdinov
A. A. Valiev
spellingShingle R. I. Ibyatov
F. Sh. Shaykhutdinov
A. A. Valiev
The analysis of spring wheat productivity by the method of principal component
Зерновое хозяйство России
spring wheat
factor analysis
principal component
visualizing of dataset
neural net model
author_facet R. I. Ibyatov
F. Sh. Shaykhutdinov
A. A. Valiev
author_sort R. I. Ibyatov
title The analysis of spring wheat productivity by the method of principal component
title_short The analysis of spring wheat productivity by the method of principal component
title_full The analysis of spring wheat productivity by the method of principal component
title_fullStr The analysis of spring wheat productivity by the method of principal component
title_full_unstemmed The analysis of spring wheat productivity by the method of principal component
title_sort analysis of spring wheat productivity by the method of principal component
publisher Federal State Budgetary Scientific Institution “Agricultural Research Center “Donskoy”"
series Зерновое хозяйство России
issn 2079-8725
2079-8733
publishDate 2018-05-01
description The work deals with the use of the factor analysis to reduce the importance of factors affecting spring wheat productivity. To carry out the analysis among eight most affecting on crop productivity factors we used the dataset of 32 years. All the dataset has been pre-normalized, being centered and presented in tabular form. Eight principal components were calculated, and the factor loadings were determined. According to the factor loadings it has been decided to take four principal components describing 84% of general dispersion. Each principal component has been presented as a linear combination of factor loadings and factors. The use of principal components allowed reducing the size of initial dataset from eight factors to four ones. The obtained information has been given in the space of principal components. The new coordinates of the experimental dataset on spring wheat productivity has been estimated by the received interdependences. The initial dataset has been given in a graphic form to search latent interdependences among factors. The number of diagrams in four principal components is six variables in a binary space and four ones in tree-dimensional space. It has been given a diagram of the data according to the first and the fourth principal component. The location of the points shows that the largest value of kernel weight is connected with high indexes of gluten content. It has been constructed a model on the basis of neural network (multiclass perceptron) with one input, one output and one latent layer. The neural network has been preliminary studied according to initial dataset and checked for adequacy
topic spring wheat
factor analysis
principal component
visualizing of dataset
neural net model
url https://www.zhros.ru/jour/article/view/41
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