2010
DOI: 10.1111/j.1600-0587.2009.05891.x
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Predicting species distributions based on incomplete survey data: the trade‐off between precision and scale

Abstract: Systematic species surveys over large areas are mostly not affordable, constraining conservation planners to make best use of incomplete data. Spatially explicit species distribution models (SDM) may be useful to detect and compensate for incomplete information. SDMs can either be based on standardized, systematic sampling in a restricted subarea, or – as a cost‐effective alternative – on data haphazardly collated by “volunteer‐based monitoring schemes” (VMS), area‐wide but inherently biased and of heterogeneo… Show more

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Cited by 82 publications
(67 citation statements)
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References 61 publications
(111 reference statements)
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“…These elements have to be acknowledged and appropriately dealt with as they are inherent to map production and may cause issues for conservation and management planning (Tulloch et al, 2016). In addition, they are all related; for instance, there is often a relationship between data quality and spatial scale (Braunisch and Suchant, 2010;, and between data quality and model selection (Rondinini et al, 2006). This contribution to the literature was written keeping this antinomy in mind, which can be summarized with a quote from Box and Draper (1987), who wrote that "essentially, all models are wrong, but some are useful, " and a subsequent quote by : "all spatial data are wrong, but some are useful."…”
Section: Resultsmentioning
confidence: 99%
“…These elements have to be acknowledged and appropriately dealt with as they are inherent to map production and may cause issues for conservation and management planning (Tulloch et al, 2016). In addition, they are all related; for instance, there is often a relationship between data quality and spatial scale (Braunisch and Suchant, 2010;, and between data quality and model selection (Rondinini et al, 2006). This contribution to the literature was written keeping this antinomy in mind, which can be summarized with a quote from Box and Draper (1987), who wrote that "essentially, all models are wrong, but some are useful, " and a subsequent quote by : "all spatial data are wrong, but some are useful."…”
Section: Resultsmentioning
confidence: 99%
“…To strike a balance between the spatial resolution of environmental variables and occurrence data, and also to consider the effects of reduced resolution on predicted outputs (Braunisch and Suchant 2010;Hu and Jiang 2010), we resampled all variables with an initial grid cell of 1×1 km to 8×8 km using ArcGIS 9.2 (ESRI, Redland, USA).…”
Section: Environmental Variablesmentioning
confidence: 99%
“…Compared with spatial resolution, which has attracted substantial attention (e.g., Braunisch and Suchant 2010;Hu and Jiang 2010), the extent of the study region has until recently been ignored, or at least has not been considered explicitly in most studies (e.g., Costa and Schlupp 2010; but see Acevedo et al 2012;Anderson and Raza 2010;Barve et al 2011). Because patterns observed on one scale may not be apparent on another, it is essential to understand the theory and processes driving the observed distribution patterns in order to avoid a mismatch between the scale used for modeling and the one at which key processes occur (Guisan and Thuiller 2005).…”
Section: Introductionmentioning
confidence: 99%
“…Despite attempts to address this challenge (e.g. Braunisch & Suchant 2010), it is still unclear which characteristics should be given a higher priority in sampling strategy. Fine reso lution data arguably yields better predictive models if the data quality is adequate, even if the sample size of biological data is smaller (Huston 2002, Engler et al 2004, Kaliontzopoulou et al 2008, Reside et al 2011, but this conclusion is not unanimous (Braunisch & Suchant 2010).…”
Section: Observational Scale: Representing Nature With Spatial Datamentioning
confidence: 99%