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A benchmarking between deep learning, support vector machine and bayesian threshold best linear unbiased prediction for predicting ordinal traits in plant breeding

Autor: Montesinos-Lopez, O.A.
Autor: Martin-Vallejo, J.
Autor: Crossa, J.
Autor: Gianola, D.
Autor: Hernández Suárez, C.M.
Autor: Montesinos-Lopez, A.
Autor: Juliana, P.
Autor: Singh, R.P.
Año: 2019
ISSN: ESSN: 2160-1836
URI: https://hdl.handle.net/10883/20090
Resumen: Genomic selection is revolutionizing plant breeding. However, still lacking are better statistical models for ordinal phenotypes to improve the accuracy of the selection of candidate genotypes. For this reason, in this paper we explore the genomic based prediction performance of two popular machine learning methods: the Multi Layer Perceptron (MLP) and support vector machine (SVM) methods vs. the Bayesian threshold genomic best linear unbiased prediction (TGBLUP) model. We used the percentage of cases correctly classified (PCCC) as a metric to measure the prediction performance, and seven real data sets to evaluate the prediction accuracy, and found that the best predictions (in four out of the seven data sets) in terms of PCCC occurred under the TGLBUP model, while the worst occurred under the SVM method. Also, in general we found no statistical differences between using 1, 2 and 3 layers under the MLP models, which means that many times the conventional neuronal network model with only one layer is enough. However, although even that the TGBLUP model was better, we found that the predictions of MLP and SVM were very competitive with the advantage that the SVM was the most efficient in terms of the computational time required.
Formato: PDF
Lenguaje: English
Editor: Genetics Society of America
Tipo: Article
Lugar de publicación: Bethesda, MD
Páginas: 601-618
Número: 2
Volumen: 9
DOI: 10.1534/g3.118.200998
Palabras Claves: Threshold GBLUP
Palabras Claves: Deep Learning
Palabras Claves: Support Vector Machine
Palabras Claves: Genomic Selection
Palabras Claves: Genomic Prediction
Palabras Claves: GenPred
Palabras Claves: Shared Data Resources
Agrovoc: BAYESIAN THEORY
Agrovoc: STATISTICAL METHODS
Agrovoc: MACHINE LEARNING
Agrovoc: ARTIFICIAL SELECTION
Agrovoc: PLANT BREEDING
Agrovoc: CROP FORECASTING
Agrovoc: DATA ANALYSIS
Revista: G3: Genes, Genomes, Genetics


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