FAO AGRIS - International System for Agricultural Science and Technology

A penalized regression method for genomic prediction reduces mismatch between training and testing sets

2024

Montesinos-Lopez, O.A. | Pulido-Carrillo, C.D. | Montesinos-López, A. | Larios Trejo, J.A. | Montesinos-Lopez, J.C. | Agbona, A. | Crossa, J.


Bibliographic information
Publisher
MDPI
Other Subjects
Elastic net regression; Ridge regression; Datasets; Lasso regression; Mismatch; Agricultural sciences and biotechnology; Weighted regression
Language
English
Format
application/pdf
License
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Type
Journal Article; Published Version
Source
8, 15, 2073-4425, Genes, 969

2024-10-08
2025-05-22
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