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Spatial prediction of species distribution: an interface between ecological theory and statistical modelling [Review]

机译:物种分布的空间预测:生态理论与统计模型之间的接口[综述]

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Neglect of ecological knowledge is a limiting factor in the use of statistical modelling to predict species distribution. Three components are needed for statistical modelling, an ecological model concerning the ecological theory to be used or tested, a data model concerning the collection and measurement of the data, and a statistical model concerning the statistical theory and methods used. This component framework is reviewed with emphasis on ecological theory. The expected shape of a species response curve to an environmental gradient is a central assumption on which agreement has yet to be reached. The nature of the environmental predictors whether indirect variables, e.g. latitude that have no physiological impact on plants, or direct variables, e.g. temperature also influence the type of response expected. Straight-line relationships between organisms and environment are often used uncritically. Many users of canonical correlation analysis use linear (straight-line) functions to relate ordination axes to variables such as slope and aspect though this is not a necessary part of the method. Some statisticians have used straight lines for species/environment relationships without testing, when evaluating new statistical procedures. Assumptions used in one component often conflict with those in another component. Statistical models can be used to explore ecological theory. Skewed species response curves predominate contrary to the symmetric unimodal curves assumed by some statistical methods. Improvements in statistical modelling can be achieved based on ecological concepts. Examples include incorporating interspecitic competition from dominant species; more proximal predictors based on water balance models and spatial autocorrelation procedures to accommodate non-equilibrium vegetation. (C) 2002 Elsevier Science B.V. All rights reserved. [References: 111]
机译:忽视生态知识是使用统计模型预测物种分布的限制因素。统计建模需要三个组件,一个涉及要使用或测试的生态理论的生态模型,一个涉及数据收集和测量的数据模型,以及一个有关所使用的统计理论和方法的统计模型。审查了这一组成框架,重点是生态理论。物种对环境梯度的响应曲线的预期形状是尚未达成共识的主要假设。环境预测变量的性质是否是间接变量,例如对植物没有生理影响或直接变量的纬度,例如温度也会影响预期的响应类型。生物与环境之间的直线关系通常被不加批判地使用。规范相关分析的许多用户使用线性(直线)函数将协调轴与变量(例如坡度和坡向)相关联,尽管这不是方法的必要部分。在评估新的统计程序时,一些统计学家在未进行测试的情况下使用了直线用于物种/环境关系。一个组件中使用的假设通常与另一组件中的假设冲突。统计模型可用于探索生态理论。与某些统计方法假定的对称单峰曲线相反,偏态物种响应曲线占主导地位。基于生态概念,可以实现统计模型的改进。例子包括纳入优势物种的种间竞争;基于水平衡模型和空间自相关程序的更多近端预测变量,以适应​​非平衡植被。 (C)2002 Elsevier Science B.V.保留所有权利。 [参考:111]

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