Johnson–Schumacher Split-Plot Design Modelling of Rice Yield

I. David, O. Asiribo, H. G. Dikko, P. O. Ikwuoche
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Abstract

Summary In this research, an intrinsically nonlinear split-plot design model (INSPDM) is formulated and studied. It was formulated by fitting a Johnson–Schumacher (JS) function to the split-plot model mean function. The fitted model parameters are estimated using the estimated generalized least squares (EGLS) technique based on a Gauss–Newton procedure with Taylor series expansion, by minimizing the objective function of the model. The variance components for the whole plot and subplot random effects are estimated using restricted maximum likelihood estimation (REML) techniques. The adequacy of the fitted INSPDM was tested using four median adequacy measures: resistant coefficient of determination, resistant prediction coefficient of determination, the resistant modeling efficiency statistic, and the median square error prediction statistic based on the residuals of the fitted model. Akaike’s Information Criterion (AIC), Corrected Akaike’s Information Criterion (AICC) and Bayesian Information Criterion (BIC) statistics are used to select the best parameter estimation technique. The results obtained are compared with the techniques of ordinary least squares (OLS) and EGLS via maximum likelihood estimation (MLE). The results showed the model to be adequate, reliable, stable, and a good fit based on EGLS-REML when compared with OLS and EGLS-MLE fitted model parameter estimates.
水稻产量的Johnson-Schumacher分块设计模型
本研究建立并研究了一种本质非线性的分图设计模型(INSPDM)。它是通过将Johnson-Schumacher (JS)函数拟合到分裂图模型均值函数来表示的。通过最小化模型的目标函数,采用基于泰勒级数展开的高斯-牛顿过程的估计广义最小二乘(EGLS)技术估计拟合模型的参数。利用有限最大似然估计技术估计了整个图和子图随机效应的方差成分。采用抗判定系数、抗判定预测系数、抗建模效率统计量和基于拟合模型残差的中位数平方误差预测统计量四种中位数充分性度量来检验拟合的INSPDM的充分性。采用赤池信息准则(AIC)、修正赤池信息准则(AICC)和贝叶斯信息准则(BIC)统计量选择最佳参数估计技术。通过极大似然估计(MLE),将所得结果与普通最小二乘(OLS)和EGLS技术进行了比较。结果表明,与OLS和EGLS-MLE拟合模型参数估计相比,基于EGLS-REML的模型充分、可靠、稳定,拟合效果良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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