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Determining the Most Important Physiological and Agronomic Traits Contributing to Maize Grain Yield through Machine Learning Algorithms: A New Avenue in Intelligent Agriculture

机译:通过机器学习算法确定有助于玉米籽粒产量的最重要生理和农艺性状:智能农业的新途径

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摘要

Prediction is an attempt to accurately forecast the outcome of a specific situation while using input information obtained from a set of variables that potentially describe the situation. They can be used to project physiological and agronomic processes; regarding this fact, agronomic traits such as yield can be affected by a large number of variables. In this study, we analyzed a large number of physiological and agronomic traits by screening, clustering, and decision tree models to select the most relevant factors for the prospect of accurately increasing maize grain yield. Decision tree models (with nearly the same performance evaluation) were the most useful tools in understanding the underlying relationships in physiological and agronomic features for selecting the most important and relevant traits (sowing date-location, kernel number per ear, maximum water content, kernel weight, and season duration) corresponding to the maize grain yield. In particular, decision tree generated by C&RT algorithm was the best model for yield prediction based on physiological and agronomical traits which can be extensively employed in future breeding programs. No significant differences in the decision tree models were found when feature selection filtering on data were used, but positive feature selection effect observed in clustering models. Finally, the results showed that the proposed model techniques are useful tools for crop physiologists to search through large datasets seeking patterns for the physiological and agronomic factors, and may assist the selection of the most important traits for the individual site and field. In particular, decision tree models are method of choice with the capability of illustrating different pathways of yield increase in breeding programs, governed by their hierarchy structure of feature ranking as well as pattern discovery via various combinations of features.
机译:预测是在使用从一组可能描述该情况的变量中获得的输入信息来准确预测特定情况的结果的尝试。它们可用于预测生理和农艺过程;考虑到这一事实,农艺性状(如产量)可能会受到大量变量的影响。在这项研究中,我们通过筛选,聚类和决策树模型分析了许多生理和农艺性状,以选择最相关的因素来准确提高玉米籽粒的产量。决策树模型(具有几乎相同的性能评估)是了解生理和农艺学特征之间潜在关系的最有用工具,用于选择最重要和相关的性状(播种日期位置,每只耳朵的粒数,最大水分含量,粒数)重量和季节持续时间)对应于玉米籽粒的产量。特别是,由C&RT算法生成的决策树是基于生理和农艺性状进行产量预测的最佳模型,可在以后的育种程序中广泛使用。当对数据使用特征选择过滤时,在决策树模型中没有发现显着差异,但是在聚类模型中观察到了积极的特征选择效果。最后,结果表明,所提出的模型技术是作物生理学家搜索大型数据库以寻找生理和农艺因素模式的有用工具,并且可能有助于针对单个地点和田地选择最重要的性状。特别地,决策树模型是一种选择方法,能够说明育种程序中产量增加的不同途径,并受其特征分级的层次结构以及通过各种特征组合进行模式发现的支配。

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