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22. A Bayesian Genomic Multi-output Regressor Stacking Model for Predicting Multi-trait Multi-environment Plant Breeding Data. Montesinos-López OA; Montesinos-López A; Crossa J; Cuevas J; Montesinos-López JC; Gutiérrez ZS; Lillemo M; Philomin J; Singh R G3 (Bethesda); 2019 Oct; 9(10):3381-3393. PubMed ID: 31427455 [TBL] [Abstract][Full Text] [Related]
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