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Prediction of multiple-trait and multiple-environment genomic data using recommender systems

Autor: Montesinos-Lopez, O.A.
Autor: Montesinos-Lopez, A.
Autor: Crossa, J.
Autor: Montesinos-Lopez, J.C.
Autor: Mota-Sanchez, D.
Autor: Estrada-González, F.
Autor: Gillberg, J.
Autor: Singh, R.G.
Autor: Mondal, S.
Autor: Juliana, P.
Año: 2018
URI: http://hdl.handle.net/10883/19119
Resumen: 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: itembased collaborative filtering (IBCF) and the matrix factorization algorithm (MF) in the context of multiple traits and multiple environments. The IBCF and MF methods were compared with two conventional methods on simulated and real data. Results of the simulated and real data sets show that the IBCF technique was slightly better in terms of prediction accuracy than the two conventional methods and the MF method when the correlation was moderately high. The IBCF technique is very attractive because it produces good predictions when there is high correlation between items (environment–trait combinations) and its implementation is computationally feasible, which can be useful for plant breeders who deal with very large data sets.
Formato: PDF
Lenguaje: English
Editor: Genetics Society of America
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Tipo: Article
Lugar de publicación: Bethesda, MD
Páginas: 131-147
Número: 1
Volumen: 8
DOI: 10.1534/g3.117.300309
Palabras Claves: Genomic Information
Palabras Claves: Matrix Factorization
Palabras Claves: Prediction Accuracy
Palabras Claves: Collaborative Foltering
Palabras Claves: GenPred
Palabras Claves: Shared Data Resources
Agrovoc: GENOMICS
Agrovoc: GENOTYPE ENVIRONMENT INTERACTION
Agrovoc: STATISTICAL METHODS
Datasets relacionados: http://hdl.handle.net/11529/11099
Revista: G3: Genes, Genomes, Genetics


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    Genetic Resources including germplasm collections, wild relatives, genotyping, genomics, and IP

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