Deep kernel and deep learning for genomic-based prediction

Deep learning (DL) is a promising method in the context of genomic prediction for selecting individuals early in time without measuring their phenotypes. iI this paper we compare the performance in terms of genome-based prediction of the DL method, deep kernel (arc-cosine kernel, AK) method, Gaussian kernel (GK) method and the conventional kernel method (Genomic Best Linear Unbiased Predictor, GBLUP, GB). We used two real wheat data sets for the benchmarking of these methods. We found that the GK and deep kernel AK methods outperformed the DL and the conventional GB methods, although the gain in terms of prediction performance of AK and GK was not very large but they have the advantage that no tuning parameters are required. Furthermore, although AK and GK had similar genomic-based performance, deep kernel AK is easier to implement than the GK. For this reason, our results suggest that AK is an alternative to DL models with the advantage that no tuning process is required.

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Additional Info

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Author Crossa, Jose, Martini, Johannes, Gianola, Daniel, Pérez-Rodríguez, Paulino, Burgueño, Juan, Singh, Ravi, Juliana, Philomin, Montesinos-López, Osval A., Cuevas, Jaime
Maintainer CIMMYT Research Data & Software Repository Network
Last Updated January 20, 2025, 15:35 (UTC)
Created January 20, 2025, 15:35 (UTC)
contributor Shrestha, Rosemary
creator Crossa, Jose
date 2019-08-15T00:00:00
harvest_object_id 2488bea4-895f-4f50-aaaf-b9e1029ade80
harvest_source_id a58b0729-e941-4389-816d-5823f01c0d28
harvest_source_title CIMMYT Research Data
identifier https://hdl.handle.net/11529/10548273
language English
metadata_modified 2024-10-26T07:00:03
set_spec cimmytdatadvn