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Stochastic structure and individual-tree growth models [Review]

机译:随机结构和单树生长模型[综述]

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The majority of past and current individual-tree growth modelling methodologies have failed to characterise and incorporate structured stochastic components. Rather, they have relied on deterministic predictions or have added an unstructured random component to predictions. In particular, spatial stochastic structure has been neglected, despite being present in most applications of individual-tree growth models. Spatial stochastic structure (also called spatial dependence or spatial autocorrelation) eventuates when spatial influences such as competition and micro-site effects are not fully captured in models. Temporal stochastic structure (also called temporal dependence or temporal autocorrelation) eventuates when a sequence of measurements is taken on an individual-tree over time, and variables explaining temporal variation in these measurements are not included in the model. Nested stochastic structure eventuates when measurements are combined across sampling units and differences among the sampling units are not fully captured in the model. This review examines spatial, temporal, and nested stochastic structure and instances where each has been characterised in the forest biometry and statistical literature. Methodologies for incorporating stochastic structure in growth model estimation and prediction are described. Benefits from incorporation of stochastic structure include valid statistical inference, improved estimation efficiency, and more realistic and theoretically sound predictions. It is proposed in this review that individual-tree modelling methodologies need to characterise and include structured stochasticity. Possibilities for future research are discussed.
机译:过去和现在的大多数单树生长建模方法大多数都无法描述和整合结构化随机成分。相反,他们依赖于确定性预测,或者在预测中添加了非结构化随机分量。特别是,尽管随机树在大多数单树生长模型的应用中都存在,但它却被忽略了。当模型中未完全捕获竞争和微观场所效应等空间影响时,就会发生空间随机结构(也称为空间依赖性或空间自相关)。当随时间推移对一棵树进行一系列测量时,会出现时间随机结构(也称为时间相关性或时间自相关),并且解释这些测量值中的时间变化的变量未包含在模型中。当在各个采样单元之间组合测量并且在模型中没有完全捕获采样单元之间的差异时,将导致嵌套的随机结构。这篇综述研究了空间,时间和嵌套的随机结构,以及在森林生物统计学和统计文献中每个特征都被描述过的实例。描述了将随机结构纳入增长模型估计和预测的方法。合并随机结构的好处包括有效的统计推断,改进的估计效率以及更现实和理论上合理的预测。在这篇评论中提出,个体树建模方法需要表征并包括结构化的随机性。讨论了未来研究的可能性。

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