In genomic-enabled prediction, the task of improving the accuracy of the prediction of lines in environments is difficult because the available information is generally sparse and usually has low correlations between traits. In current genomic selection, although researchers have a large amount of information and appropriate statistical models to process it, there is still limited computing efficiency to do so. Although some statistical models are usually mathematically elegant, many of them are also computationally inefficient, and they are impractical for many traits, lines, environments, and years because they need to sample from huge normal multivariate distributions. For these reasons, this study explores two recommender systems: item-...
The statistical analysis of multi-environment trial data aims to provide reliable and accurate predi...
Incorporating measurements on correlated traits into genomic prediction models can increase predicti...
The phenomenon of genotype × environment (G × E) interaction in plant breeding decreases selection a...
In genomic-enabled prediction, the task of improving the accuracy of the prediction of lines in envi...
Multi-trait and multi-environment data are common in animal and plant breeding programs. However, wh...
Genomic selection (GS) changed the way plant breeders select genotypes. GS takes advantage of phenot...
The Item-Based Collaborative Filtering for Multitrait and Multienvironment Data (IBCF.MTME) package ...
Genomic prediction relies on genotypic marker information to predict the agronomic performance of fu...
Genomic-enabled prediction models are of paramount importance for the successful implementation of g...
Genomic selection has become a reality in plant breeding programs with the reduction in genotyping c...
Evidence that genomic selection (GS) is a technology that is revolutionizing plant breeding continue...
In this paper we propose a Bayesian multi-output regressor stacking (BMORS) model that is a generali...
Incorporating measurements on correlated traits into genomic prediction models can increase predicti...
Genomic prediction for plants is heavily influenced by the environment. Not only do the environmenta...
The statistical analysis of multi-environment trial data aims to provide reliable and accurate predi...
The statistical analysis of multi-environment trial data aims to provide reliable and accurate predi...
Incorporating measurements on correlated traits into genomic prediction models can increase predicti...
The phenomenon of genotype × environment (G × E) interaction in plant breeding decreases selection a...
In genomic-enabled prediction, the task of improving the accuracy of the prediction of lines in envi...
Multi-trait and multi-environment data are common in animal and plant breeding programs. However, wh...
Genomic selection (GS) changed the way plant breeders select genotypes. GS takes advantage of phenot...
The Item-Based Collaborative Filtering for Multitrait and Multienvironment Data (IBCF.MTME) package ...
Genomic prediction relies on genotypic marker information to predict the agronomic performance of fu...
Genomic-enabled prediction models are of paramount importance for the successful implementation of g...
Genomic selection has become a reality in plant breeding programs with the reduction in genotyping c...
Evidence that genomic selection (GS) is a technology that is revolutionizing plant breeding continue...
In this paper we propose a Bayesian multi-output regressor stacking (BMORS) model that is a generali...
Incorporating measurements on correlated traits into genomic prediction models can increase predicti...
Genomic prediction for plants is heavily influenced by the environment. Not only do the environmenta...
The statistical analysis of multi-environment trial data aims to provide reliable and accurate predi...
The statistical analysis of multi-environment trial data aims to provide reliable and accurate predi...
Incorporating measurements on correlated traits into genomic prediction models can increase predicti...
The phenomenon of genotype × environment (G × E) interaction in plant breeding decreases selection a...