Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat

In genome-enabled prediction, parametric, semi-parametric, and non-parametric regression models have been used. This study assessed the predictive ability of linear and non-linear models using dense molecular markers. The linear models were linear on marker effects and included the Bayesian LASSO, Bayesian ridge regression, Bayes A, and Bayes B. The non-linear models (this refers to non-linearity on markers) were reproducing kernel Hilbert space (RKHS) regression, Bayesian regularized neural networks (BRNN), and radial basis function neural networks (RBFNN). These statistical models were compared using 306 elite wheat lines from CIMMYT genotyped with 1717 diversity array technology (DArT) markers and two traits, days to heading (DTH) and grain yield (GY), measured in each of 12 environments. It was found that the three non-linear models had better overall prediction accuracy than the linear regression specification. Results showed a consistent superiority of RKHS and RBFNN over the Bayesian LASSO, Bayesian ridge regression, Bayes A, and Bayes B models.

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Main Authors: Perez-Rodriguez, P., Gianola, D., González-Camacho, J.M., Crossa, J., Manes, Y., Dreisigacker, S.
Format: Article biblioteca
Language:English
Published: Genetics Society of America 2012
Subjects:AGRICULTURAL SCIENCES AND BIOTECHNOLOGY, GenPred, Shared Data Resources, WHEAT, BAYESIAN THEORY, MATHEMATICAL MODELS, CROP FORECASTING,
Online Access:http://hdl.handle.net/10883/2970
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spelling dig-cimmyt-10883-29702023-12-08T15:06:27Z Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat Perez-Rodriguez, P. Gianola, D. González-Camacho, J.M. Crossa, J. Manes, Y. Dreisigacker, S. AGRICULTURAL SCIENCES AND BIOTECHNOLOGY GenPred Shared Data Resources WHEAT BAYESIAN THEORY MATHEMATICAL MODELS CROP FORECASTING In genome-enabled prediction, parametric, semi-parametric, and non-parametric regression models have been used. This study assessed the predictive ability of linear and non-linear models using dense molecular markers. The linear models were linear on marker effects and included the Bayesian LASSO, Bayesian ridge regression, Bayes A, and Bayes B. The non-linear models (this refers to non-linearity on markers) were reproducing kernel Hilbert space (RKHS) regression, Bayesian regularized neural networks (BRNN), and radial basis function neural networks (RBFNN). These statistical models were compared using 306 elite wheat lines from CIMMYT genotyped with 1717 diversity array technology (DArT) markers and two traits, days to heading (DTH) and grain yield (GY), measured in each of 12 environments. It was found that the three non-linear models had better overall prediction accuracy than the linear regression specification. Results showed a consistent superiority of RKHS and RBFNN over the Bayesian LASSO, Bayesian ridge regression, Bayes A, and Bayes B models. 1595-1605 2013-06-07T21:13:01Z 2013-06-07T21:13:01Z 2012 Article No http://hdl.handle.net/10883/2970 10.1534/g3.112.003665 English CIMMYT manages Intellectual Assets as International Public Goods. The user is free to download, print, store and share this work. In case you want to translate or create any other derivative work and share or distribute such translation/derivative work, please contact CIMMYT-Knowledge-Center@cgiar.org indicating the work you want to use and the kind of use you intend; CIMMYT will contact you with the suitable license for that purpose. Open Access PDF Genetics Society of America http://www.g3journal.org/content/2/12/1595.full 12 2 G3: Genes, Genomes, Genetics
institution CIMMYT
collection DSpace
country México
countrycode MX
component Bibliográfico
access En linea
databasecode dig-cimmyt
tag biblioteca
region America del Norte
libraryname CIMMYT Library
language English
topic AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
GenPred
Shared Data Resources
WHEAT
BAYESIAN THEORY
MATHEMATICAL MODELS
CROP FORECASTING
AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
GenPred
Shared Data Resources
WHEAT
BAYESIAN THEORY
MATHEMATICAL MODELS
CROP FORECASTING
spellingShingle AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
GenPred
Shared Data Resources
WHEAT
BAYESIAN THEORY
MATHEMATICAL MODELS
CROP FORECASTING
AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
GenPred
Shared Data Resources
WHEAT
BAYESIAN THEORY
MATHEMATICAL MODELS
CROP FORECASTING
Perez-Rodriguez, P.
Gianola, D.
González-Camacho, J.M.
Crossa, J.
Manes, Y.
Dreisigacker, S.
Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
description In genome-enabled prediction, parametric, semi-parametric, and non-parametric regression models have been used. This study assessed the predictive ability of linear and non-linear models using dense molecular markers. The linear models were linear on marker effects and included the Bayesian LASSO, Bayesian ridge regression, Bayes A, and Bayes B. The non-linear models (this refers to non-linearity on markers) were reproducing kernel Hilbert space (RKHS) regression, Bayesian regularized neural networks (BRNN), and radial basis function neural networks (RBFNN). These statistical models were compared using 306 elite wheat lines from CIMMYT genotyped with 1717 diversity array technology (DArT) markers and two traits, days to heading (DTH) and grain yield (GY), measured in each of 12 environments. It was found that the three non-linear models had better overall prediction accuracy than the linear regression specification. Results showed a consistent superiority of RKHS and RBFNN over the Bayesian LASSO, Bayesian ridge regression, Bayes A, and Bayes B models.
format Article
topic_facet AGRICULTURAL SCIENCES AND BIOTECHNOLOGY
GenPred
Shared Data Resources
WHEAT
BAYESIAN THEORY
MATHEMATICAL MODELS
CROP FORECASTING
author Perez-Rodriguez, P.
Gianola, D.
González-Camacho, J.M.
Crossa, J.
Manes, Y.
Dreisigacker, S.
author_facet Perez-Rodriguez, P.
Gianola, D.
González-Camacho, J.M.
Crossa, J.
Manes, Y.
Dreisigacker, S.
author_sort Perez-Rodriguez, P.
title Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
title_short Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
title_full Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
title_fullStr Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
title_full_unstemmed Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
title_sort comparison between linear and non-parametric regression models for genome-enabled prediction in wheat
publisher Genetics Society of America
publishDate 2012
url http://hdl.handle.net/10883/2970
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