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Spatial Correlation Matrix Selection Using Bayesian Model Averaging To Characterize Inter-tree Competition In Loblolly Pine Trees

机译:基于贝叶斯模型的空间相关矩阵选择来表征火炬松树间树间竞争

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Many applications of statistical methods for data that are spatially correlated require the researcher to specify the correlation structure of the data. This can be a difficult task as there are many candidate structures. Some spatial correlation structures depend on the distance between the observed data points while others rely on neighborhood structures. In this paper, Bayesian methods that systematically determine the 'best' correlation structure from a predefined class of structures are proposed. Bayes factors, Highest Probability Models, and Bayesian Model Averaging are employed to determine the 'best' correlation structure and to average across these structures to create a non-parametric alternative structure for a loblolly pine data-set with known tree coordinates. Tree diameters and heights were measured and an investigation into the spatial dependence between the trees was conducted. Results showed that the most probable model for the spatial correlation structure agreed with allometric trends for loblolly pine. A combined Matern, simultaneous autoregressive model and conditional autoregressive model best described the inter-tree competition among the loblolly pine tree data considered in this research.
机译:对于空间相关的数据,统计方法的许多应用都要求研究人员指定数据的相关结构。由于存在许多候选结构,因此这可能是一项艰巨的任务。一些空间相关性结构取决于观察到的数据点之间的距离,而另一些空间相关性结构则取决于邻域结构。在本文中,提出了一种贝叶斯方法,该方法从预定义的结构类中系统地确定“最佳”相关结构。使用贝叶斯因子,最高概率模型和贝叶斯模型平均来确定“最佳”相关结构,并在这些结构之间求平均值,以创建具有已知树坐标的火炬松数据集的非参数替代结构。测量树木的直径和高度,并调查树木之间的空间依赖性。结果表明,空间相关结构的最可能模型与火炬松的异速生长趋势相吻合。结合的Matern,同时自回归模型和条件自回归模型最能描述本研究中所考虑的火炬松树数据之间的树间竞争。

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