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Estimating and Modelling Bias of the Hierarchical Partitioning Public-Domain Software: Implications in Environmental Management and Conservation

机译:分层划分公共域软件的偏差的估计和建模:对环境管理和保护的影响

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摘要

BackgroundHierarchical partitioning (HP) is an analytical method of multiple regression that identifies the most likely causal factors while alleviating multicollinearity problems. Its use is increasing in ecology and conservation by its usefulness for complementing multiple regression analysis. A public-domain software “hier.part package” has been developed for running HP in R software. Its authors highlight a “minor rounding error” for hierarchies constructed from >9 variables, however potential bias by using this module has not yet been examined. Knowing this bias is pivotal because, for example, the ranking obtained in HP is being used as a criterion for establishing priorities of conservation.
机译:背景技术分层划分(HP)是一种多元回归分析方法,它可以确定最可能的因果关系,同时缓解多重共线性问题。由于其对多元回归分析的补充作用,其在生态和保护方面的用途正在增加。已开发出公共领域的软件“ hier.part软件包”,用于在R软件中运行HP。它的作者强调了由> 9个变量构成的层次结构的“较小舍入误差”,但是尚未研究使用此模块的潜在偏差。知道这种偏见是至关重要的,因为例如,在HP中获得的排名正被用作确定保护重点的标准。

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