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A Bayesian approach for modelling non-linear longitudinal/hierarchical data with random effects in forestry

机译:在林业中具有随机效应的非线性纵向/层次数据建模的贝叶斯方法

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摘要

Longitudinal or hierarchical data are often observed in forestry, which can pose both challenges and opportunities when performing statistical analyses. The current standard approach for analysing these types of data is mixed-effects models under the frequentist paradigm. Bayesian techniques have several advantages when compared with traditional approaches, but their use in forestry has been relatively limited. In this paper, we propose a Bayesian solution to non-linear mixed-effects models for longitudinal data in forestry. We demonstrate the Bayesian modelling process using individual tree height–age data for balsam fir (Abies balsamea (L.)) collected from eastern Maine. Due to its frequent utilization in modelling dominant tree height growth over time, we choose to examine models based on the Chapman–Richards function. We established four different model formulations, each having varying subject-specific parameters, which we estimated using both frequentist and Bayesian approaches. We found the estimation results to be quite close between the two methods. In addition, an important feature of the Bayesian method is the unified manner in which estimation and prediction are handled. Specifically, local parameters can be predicted for a new dataset after setting the posterior distributions from the estimation stage as new priors in the prediction phase.
机译:在林业中经常观察到纵向或分层数据,这在进行统计分析时既可能带来挑战,也可能带来机遇。用于分析这些类型数据的当前标准方法是在频繁范式下的混合效应模型。与传统方法相比,贝叶斯技术具有多个优点,但是它们在林业中的使用相对有限。在本文中,我们提出了针对林业纵向数据的非线性混合效应模型的贝叶斯解决方案。我们使用从缅因州东部收集的香脂冷杉(Abies balsamea(L.))的单个树高年龄数据证明了贝叶斯建模过程。由于其经常用于建模随时间变化的主要树高增长,因此我们选择检查基于Chapman–Richards函数的模型。我们建立了四种不同的模型公式,每种模型公式具有不同的主题特定参数,我们使用常识和贝叶斯方法进行估计。我们发现两种方法之间的估算结果非常接近。另外,贝叶斯方法的重要特征是处理估计和预测的统一方式。具体而言,在将来自估计阶段的后验分布设置为预测阶段中的新先验值之后,可以为新数据集预测局部参数。

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