Ensemble of Best Linear Unbiased Predictor, Machine Learning, and Deep Learning Models Predict Maize Yield Better Than Each Model Alone

IF 2.6 Q1 AGRONOMY in silico Plants Pub Date : 2023-07-01 DOI:10.1093/insilicoplants/diad015
Daniel R Kick, Jacob D Washburn
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Abstract

Abstract Predicting phenotypes accurately from genomic, environment and management factors is key to accelerating the development of novel cultivars with desirable traits. Inclusion of management and environmental factors enables in silico studies to predict the effect of specific management interventions or future climates. Despite the value such models would confer, much work remains to improve the accuracy of phenotypic predictions. Rather than advocate for a single specific modelling strategy, here we demonstrate within large multi-environment and multi-genotype maize trials that combining predictions from disparate models using simple ensemble approaches most often results in better accuracy than using any one of the models on their own. We investigated various ensemble combinations of different model types, model numbers and model weighting schemes to determine the accuracy of each. We find that ensembling generally improves performance even when combining only two models. The number and type of models included alter accuracy with improvements diminishing as the number of models included increases. Using a genetic algorithm to optimize ensemble composition reveals that, when weighted by the inverse of each model’s expected error, a combination of best linear unbiased predictor, linear fixed effects, deep learning, random forest and support vector regression models performed best on this dataset.
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最佳线性无偏预测器、机器学习和深度学习模型的集成预测玉米产量比单独使用每个模型更好
摘要准确预测基因组、环境和管理因素的表型是加快培育具有理想性状的新品种的关键。纳入管理和环境因素使计算机研究能够预测具体管理干预措施或未来气候的影响。尽管这些模型具有一定的价值,但要提高表型预测的准确性,还有很多工作要做。本文不是提倡单一的特定建模策略,而是在大型多环境和多基因型玉米试验中证明,使用简单的集成方法将不同模型的预测结合起来,通常比单独使用任何一种模型更准确。我们研究了不同模型类型、模型数量和模型加权方案的各种集成组合,以确定每种组合的准确性。我们发现,即使只组合两个模型,集成通常也能提高性能。所包括的模型的数量和类型改变了准确性,随着所包括的模型数量的增加,改进的程度也在减少。使用遗传算法优化集成组成表明,当加权每个模型的预期误差的倒数时,最佳线性无偏预测器、线性固定效应、深度学习、随机森林和支持向量回归模型的组合在该数据集上表现最佳。
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来源期刊
in silico Plants
in silico Plants Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
4.70
自引率
9.70%
发文量
21
审稿时长
10 weeks
期刊最新文献
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