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Overcoming collinearity in path analysis of soybean [ Glycine max (L.) Merr.] grain oil content

机译:克服大豆路径分析中的相机性[甘氨酸MAX(L.)Merr。]籽粒油含量

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Path analysis allows understanding the direct and indirect effects among traits. Multicollinearity in correlation matrices may cause a bias in path analysis estimates. This study aimed to: a) understand the correlation among soybean traits and estimate their direct and indirect effects on gain oil content; b) verify the efficiency of ridge path analysis and trait culling to overcome colinearity. Three different matrices with different levels of collinearity were obtained by trait culling. Ridge path analysis was performed on matrices with strong collinearity; otherwise, a traditional path analysis was performed. The same analyses were run on a simulated dataset. Trait culling was applied to matrix R originating the matrices R 1 and R 2 . Path analysis for matrices R 1 and R 2 presented a high determination coefficient (0.856 and 0.832, respectively) and low effect of the residual variable (0.379 and 0.410 respectively). Ridge path analysis presented low determination coefficient (0.657) and no direct effects greater than the effects of the residual variable (0.585). Trait culling was more effective to overcome collinearity. Mass of grains, number of nodes, and number of pods are promising for indirect selection for oil content.
机译:路径分析允许了解特征之间的直接和间接影响。相关矩阵中的多色性性可能导致路径分析估计中的偏差。本研究旨在:a)了解大豆特征之间的相关性,并估计其对增益油含量的直接和间接影响; b)核实Ridge路径分析和特质剔除效率以克服Colinearity。通过特质剔除获得具有不同相连水平的三种不同的矩阵。对具有强烈共线性的基质进行脊路径分析;否则,进行传统的路径分析。在模拟数据集上运行相同的分析。将特征剔除应用于源自矩阵R 1和R 2的矩阵R。矩阵R 1和R 2的路径分析呈现了高测定系数(分别为0.856和0.832)和残留变量的低效果(分别为0.379和0.410)。脊通路分析呈现低测定系数(0.657),没有大于残留变量的效果的直接效果(0.585)。特质剔除更有效地克服共同性。谷物的质量,节点数量和POD的数量是对石油含量的间接选择的承诺。

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