2020
DOI: 10.1371/journal.pone.0221070
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Downscaling livestock census data using multivariate predictive models: Sensitivity to modifiable areal unit problem

Abstract: The analysis of census data aggregated by administrative units introduces a statistical bias known as the modifiable areal unit problem (MAUP). Previous researches have mostly assessed the effect of MAUP on upscaling models. The present study contributes to clarify the effects of MAUP on the downscaling methodologies, highlighting how a priori choices of scales and shapes could influence the results. We aggregated chicken and duck fine-resolution census in Thailand, using three administrative census levels in … Show more

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Cited by 12 publications
(5 citation statements)
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“…Similarly, the lower predictability at farm level compared with an aggregated level (3 km) was shown in a previous study (van Andel et al, 2017). This result, subject to the Modifiable areal unit problem (MAUP) effect was expected (Da Re et al, 2020), but it still highlights a higher correlation than existing modelling procedure in raster-based model, the GLW (Gilbert et al, 2018;Da Re et al, 2020). This confirmed that farm size at the individual level can be predicted without major loss in accuracy compared to aggregated distribution.…”
Section: Discussionsupporting
confidence: 55%
“…Similarly, the lower predictability at farm level compared with an aggregated level (3 km) was shown in a previous study (van Andel et al, 2017). This result, subject to the Modifiable areal unit problem (MAUP) effect was expected (Da Re et al, 2020), but it still highlights a higher correlation than existing modelling procedure in raster-based model, the GLW (Gilbert et al, 2018;Da Re et al, 2020). This confirmed that farm size at the individual level can be predicted without major loss in accuracy compared to aggregated distribution.…”
Section: Discussionsupporting
confidence: 55%
“…Our modelling approach focused on the “species fundamental thermal niche” concept ( sensu Hutchinson [ 118 ]) by considering temperature as the main driver of population dynamics. In light of this, the choice of temperature datasets is crucial [ 119 ]; for example, pixel size may influence model outcome because of the aggregating effect of the Modifiable Unit Areal Problem [ 120 – 122 ]. Climatic reanalysis and global/regional circulation models are reliable data sources with high temporal resolution for present climatic conditions and robust future projections, but they have coarse spatial resolution that may underestimate the microclimate and its effects on species biology [ 15 , 123 ].…”
Section: Discussionmentioning
confidence: 99%
“…Given the complexity of mixed crop-livestock farming systems in areas such as northern Ghana (Penu and Paalo, 2021), the use of land cover classes such as shrubland remain a comparatively poor proxy for rangeland. In future studies, an alternative approach would be to examine water point overlaps with the Gridded Livestock of the World (Gilbert et al, 2018) or related products (Da Re et al, 2020). Rather than relying solely on land cover, such products downscale livestock counts from agricultural censuses using ancillary geospatial data.…”
Section: Opportunities and Limitations Of Integrating Geospatial Data For Understanding The Wef Nexusmentioning
confidence: 99%