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Assessing spatial predictive models in the environmental sciences: Accuracy measures, data variation and variance explained

机译:评估环境科学中的空间预测模型:精度测量,数据变化和方差解释

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摘要

A comprehensive assessment of the performance of predictive models is necessary as they have been increasingly employed to generate spatial predictions for environmental management and conservation and their accuracy is crucial to evidence-informed decision making and, policy. In this study, we clarified relevant issues associated with variance explained (VEcv) by predictive models, established the relationships between VEcv and commonly used accuracy measures and unified these measures under VEcv that is independent of unit/scale and data variation. We quantified the relationships between these measures and data variation and found about 65% compared models and over 45% recommended models for generating spatial predictions explained no more than 50% data variance. We classified the predictive models based on VEcv, which provides a tool to directly compare the accuracy of predictive models for data with different unit/scale and variation and establishes a cross-disciplinary context and benchmark for assessing predictive models in future studies. (C) 2016 Elsevier Ltd. All rights reserved.
机译:由于越来越多地使用预测模型来生成用于环境管理和保护的空间预测,因此对预测模型的性能进行全面评估是必要的,其准确性对于以证据为依据的决策和政策至关重要。在这项研究中,我们通过预测模型澄清了与方差解释(VEcv)相关的相关问题,建立了VEcv与常用准确性度量之间的关系,并将这些度量统一在VEcv下,而与单位/范围和数据变化无关。我们量化了这些度量与数据变化之间的关系,发现大约有65%的比较模型和超过45%的推荐模型用于生成空间预测,解释了不超过50%的数据差异。我们基于VEcv对预测模型进行了分类,该模型提供了一种工具,可以直接比较具有不同单位/范围和变化的数据的预测模型的准确性,并建立跨学科的环境和基准,以评估未来研究中的预测模型。 (C)2016 Elsevier Ltd.保留所有权利。

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