物种分布模型中预测变量和响应变量之间的尺度错配:对适当谷物选择实践的回顾

IF 3 3区 地球科学 Q2 GEOGRAPHY, PHYSICAL
Vítězslav Moudrý, P. Keil, Lukáš Gábor, V. Lecours, A. Zarzo‐Arias, Vojtěch Barták, M. Malavasi, D. Rocchini, Michele Torresani, K. Gdulová, F. Grattarola, François Leroy, Elisa Marchetto, Elisa Thouverai, Jiří Prošek, J. Wild, P. Šímová
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引用次数: 5

摘要

在物种分布模型(SDM)中,预测变量和响应变量的空间粒度选择缺乏指导。本文从以下几个方面总结了目前的研究现状:(i)改变预测变量和响应变量的分辨率对模型性能的影响;(ii)进行多粒和单粒分析对模型性能的影响;(3)土地覆被类型和空间自相关性对适宜粒度选择的影响。在回顾的文献中,我们发现,粗化响应变量的分辨率通常会导致模型性能下降。因此,我们建议以更精细的分辨率为目标,除非有理由这样做(例如生态规模的专家知识)。我们还发现,到目前为止,多粒度模型在模型性能方面的改进报告相对较低,甚至可以从单尺度模型中生成有用的预测。此外,使用高分辨率预测器可以提高模型性能;然而,只有有限的证据表明这是否适用于具有较粗分辨率响应变量(例如100平方公里或更大)的模式。对于与相当常见的环境条件相关的物种,低分辨率预测器通常是足够的,但对于与不太常见的环境条件相关的物种(例如,常见与罕见的土地覆盖类别)则不够。这是因为粗化分辨率降低了异质预测因子内的可变性,并导致稀有环境的代表性不足,这可能导致模型性能下降。因此,评估多颗粒预测因子的空间自相关性可以深入了解粗化其分辨率对模型性能的影响。总的来说,我们观察到缺乏研究检查同时操纵预测和反应变量的分辨率。我们强调需要明确报告所有预测变量和响应变量的分辨率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scale mismatches between predictor and response variables in species distribution modelling: A review of practices for appropriate grain selection
There is a lack of guidance on the choice of the spatial grain of predictor and response variables in species distribution models (SDM). This review summarizes the current state of the art with regard to the following points: (i) the effects of changing the resolution of predictor and response variables on model performance; (ii) the effect of conducting multi-grain versus single-grain analysis on model performance; and (iii) the role of land cover type and spatial autocorrelation in selecting the appropriate grain size. In the reviewed literature, we found that coarsening the resolution of the response variable typically leads to declining model performance. Therefore, we recommend aiming for finer resolutions unless there is a reason to do otherwise (e.g. expert knowledge of the ecological scale). We also found that so far, the improvements in model performance reported for multi-grain models have been relatively low and that useful predictions can be generated even from single-scale models. In addition, the use of high-resolution predictors improves model performance; however, there is only limited evidence on whether this applies to models with coarser-resolution response variables (e.g. 100 km2 and coarser). Low-resolution predictors are usually sufficient for species associated with fairly common environmental conditions but not for species associated with less common ones (e.g. common vs rare land cover category). This is because coarsening the resolution reduces variability within heterogeneous predictors and leads to underrepresentation of rare environments, which can lead to a decrease in model performance. Thus, assessing the spatial autocorrelation of the predictors at multiple grains can provide insights into the impacts of coarsening their resolution on model performance. Overall, we observed a lack of studies examining the simultaneous manipulation of the resolution of predictor and response variables. We stress the need to explicitly report the resolution of all predictor and response variables.
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来源期刊
CiteScore
7.20
自引率
5.10%
发文量
53
审稿时长
>12 weeks
期刊介绍: Progress in Physical Geography is a peer-reviewed, international journal, encompassing an interdisciplinary approach incorporating the latest developments and debates within Physical Geography and interrelated fields across the Earth, Biological and Ecological System Sciences.
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