利用Copula图形模型检测干旱胁迫对玉米和小麦产量的影响

IF 2.6 Q1 AGRONOMY in silico Plants Pub Date : 2023-06-27 DOI:10.1093/insilicoplants/diad008
Sjoerd Hermes, J. van Heerwaarden, Pariya Behrouzi
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引用次数: 0

摘要

提高作物产量是农学的主要目标之一。然而,产量是由基因型、环境和管理因素(G×E×M)之间的复杂相互作用决定的,这些因素随时间和空间而变化。因此,确定产量变化的基本关系是农业研究的主要目的。在研究这种关系时,往往会使用一套狭窄的、不一定合适的统计方法,这就是为什么我们的目标是引入各种各样的农学家、生产生态学家、植物育种家和其他对使用图形模型解释产量变化感兴趣的人。更具体地说,我们希望证明copula图形模型对异构混合数据的有用性。这种新的统计学习技术提供了数据中条件独立性关系的图形表示,这些数据不一定是正态分布的,由环境、管理决策、基因型或干旱等非生物胁迫的多个组组成。本文介绍了一些基本的图形模型术语和理论,并将其应用于干旱胁迫下的埃塞俄比亚玉米和小麦产量。所提出的方法伴随着R封装异质性ixgmhttps://CRAN.R-project.org/package=heteromixgm.
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Using Copula Graphical Models to Detect the Impact of Drought Stress on Maize and Wheat Yield
Improving crop yields is one of the main goals of agronomy. However, yield is determined by a complex interplay between Genotypic, Environmental and Management factors (G × E × M) that varies across time and space. Therefore, identifying the fundamental relations underlying yield variation is a principal aim of agricultural research. A narrow, and not necessarily appropriate set of statistical methods tends to be used in the study of such relations, which is why we aim to introduce a diverse audience of agronomists, production ecologists, plant breeders and others interested in explaining yield variation to the use of graphical models. More specifically, we wish to demonstrate the usefulness of copula graphical models for heterogeneous mixed data. This new statistical learning technique provides a graphical representation of conditional independence relationships within data that is not necessarily normally distributed and consists of multiple groups for environments, management decisions, genotypes or abiotic stresses such as drought. This article introduces some basic graphical model terminology and theory, followed by an application on Ethiopian maize and wheat yield undergoing drought stress. The proposed method is accompanied with the R package heteromixgmhttps://CRAN.R-project.org/package=heteromixgm.
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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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