Deep Kernel for Genomic and Near Infrared Predictions in Multi-environment Breeding Trials

Volume: 9, Issue: 9, Pages: 2913 - 2924
Published: Sep 1, 2019
Abstract
Kernel methods are flexible and easy to interpret and have been successfully used in genomic-enabled prediction of various plant species. Kernel methods used in genomic prediction comprise the linear genomic best linear unbiased predictor (GBLUP or GB) kernel, and the Gaussian kernel (GK). In general, these kernels have been used with two statistical models: single-environment and genomic × environment (GE) models. Recently near infrared...
Paper Details
Title
Deep Kernel for Genomic and Near Infrared Predictions in Multi-environment Breeding Trials
Published Date
Sep 1, 2019
Volume
9
Issue
9
Pages
2913 - 2924
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