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Fitting four-parameter logistic model using mixed-effects modeling approach

机译:使用混合效应建模方法拟合四参数逻辑模型

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Four-parameter logistic model is used to describe height-diameter relationship of dahurian larch (Larix gmelinii. Rupr.) from longitudinal measurements using nonlinear mixed-effects modeling approach. The parameter variation in the model was divided into random effects, fixed effects, and variance-covariance structure. The values for fixed effects parameters and the variance-covariance matrix of random effects were estimated using NLME function. Autocorrelation structure was considered for explaining the dependency among multiple measurements within the each individual. Information criterion statistics (AIC, BIC and Likelihood ratio test) are used for comparing different structures of the random effects components. These methods are illustrated using the nonlinear mixed-effects methods in S-Plus software.
机译:使用四参数逻辑模型,使用非线性混合效应建模方法,通过纵向测量来描述达西落叶松(Larix gmelinii。Rupr。)的高度-直径关系。模型中的参数变化分为随机效应,固定效应和方差-协方差结构。使用NLME函数估计固定效应参数的值和随机效应的方差-协方差矩阵。考虑使用自相关结构来解释每个个体内多次测量之间的依赖性。信息标准统计量(AIC,BIC和似然比检验)用于比较随机效应分量的不同结构。使用S-Plus软件中的非线性混合效应方法说明了这些方法。

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