4.6 Article

A Comparison between Three Tuning Strategies for Gaussian Kernels in the Context of Univariate Genomic Prediction

期刊

GENES
卷 13, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/genes13122282

关键词

kernels; tuning; genomic prediction; Gaussian kernel; grid search; Bayesian optimization

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Genomic prediction is changing the way plant breeding is done by allowing the selection of candidate genotypes without measuring their traits in the field. The success of this method depends on various factors, including the statistical machine learning method used. This study compares three tuning methods for the Gaussian kernel and finds that careful tuning is important for obtaining the best prediction performance. Grid search and Bayesian optimization were found to be the most effective tuning methods. The prediction performance improvements ranged from 2.1% to 27.8% across the six datasets analyzed.
Genomic prediction is revolutionizing plant breeding since candidate genotypes can be selected without the need to measure their trait in the field. When a reference population contains both phenotypic and genotypic information, it is trained by a statistical machine learning method that is subsequently used for making predictions of breeding or phenotypic values of candidate genotypes that were only genotyped. Nevertheless, the successful implementation of the genomic selection (GS) methodology depends on many factors. One key factor is the type of statistical machine learning method used since some are unable to capture nonlinear patterns available in the data. While kernel methods are powerful statistical machine learning algorithms that capture complex nonlinear patterns in the data, their successful implementation strongly depends on the careful tuning process of the involved hyperparameters. As such, in this paper we compare three methods of tuning (manual tuning, grid search, and Bayesian optimization) for the Gaussian kernel under a Bayesian best linear unbiased predictor model. We used six real datasets of wheat (Triticum aestivum L.) to compare the three strategies of tuning. We found that if we want to obtain the major benefits of using Gaussian kernels, it is very important to perform a careful tuning process. The best prediction performance was observed when the tuning process was performed with grid search and Bayesian optimization. However, we did not observe relevant differences between the grid search and Bayesian optimization approach. The observed gains in terms of prediction performance were between 2.1% and 27.8% across the six datasets under study.

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