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Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models

Quantifying patterns of deforestation and linking these patterns to potentially influencing variables is a key component of modelling and projecting land use change. Statistical methods based on null hypothesis testing are only partially successful for interpreting deforestation in the context of th...

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Autores principales: Vaca, Raúl Abel, Golicher, Duncan John, Rodiles-Hernández, Rocío, Castillo-Santiago, Miguel Ángel, Bejarano, Marylin, Navarrete-Gutiérrez, Darío Alejandro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6760785/
https://www.ncbi.nlm.nih.gov/pubmed/31553749
http://dx.doi.org/10.1371/journal.pone.0222908
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author Vaca, Raúl Abel
Golicher, Duncan John
Rodiles-Hernández, Rocío
Castillo-Santiago, Miguel Ángel
Bejarano, Marylin
Navarrete-Gutiérrez, Darío Alejandro
author_facet Vaca, Raúl Abel
Golicher, Duncan John
Rodiles-Hernández, Rocío
Castillo-Santiago, Miguel Ángel
Bejarano, Marylin
Navarrete-Gutiérrez, Darío Alejandro
author_sort Vaca, Raúl Abel
collection PubMed
description Quantifying patterns of deforestation and linking these patterns to potentially influencing variables is a key component of modelling and projecting land use change. Statistical methods based on null hypothesis testing are only partially successful for interpreting deforestation in the context of the processes that have led to their formation. Simplifications of cause-consequence relationships that are difficult to support empirically may influence environment and development policies because they suggest simple solutions to complex problems. Deforestation is a complex process driven by multiple proximate and underlying factors and a range of scales. In this study we use a multivariate statistical analysis to provide contextual explanation for deforestation in the Usumacinta River Basin based on partial pattern matching. Our approach avoided testing trivial null hypotheses of lack of association and investigated the strength and form of the response to drivers. As not all factors involved in deforestation are easily mapped as GIS layers, analytical challenges arise due to lack of a one to one correspondence between mappable attributes and drivers. We avoided testing simple statistical hypotheses such as the detectability of a significant linear relationship between deforestation and proximity to roads or water. We developed a series of informative generalised additive models based on combinations of layers that corresponded to hypotheses regarding processes. The importance of the variables representing accessibility was emphasised by the analysis. We provide evidence that land tenure is a critical factor in shaping the decision to deforest and that direct beam insolation has an effect associated with fire frequency and intensity. The effect of winter insolation was found to have many applied implications for land management. The methodology was useful for interpreting the relative importance of sets of variables representing drivers of deforestation. It was an informative approach, thus allowing the construction of a comprehensive understanding of its causes.
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spelling pubmed-67607852019-10-04 Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models Vaca, Raúl Abel Golicher, Duncan John Rodiles-Hernández, Rocío Castillo-Santiago, Miguel Ángel Bejarano, Marylin Navarrete-Gutiérrez, Darío Alejandro PLoS One Research Article Quantifying patterns of deforestation and linking these patterns to potentially influencing variables is a key component of modelling and projecting land use change. Statistical methods based on null hypothesis testing are only partially successful for interpreting deforestation in the context of the processes that have led to their formation. Simplifications of cause-consequence relationships that are difficult to support empirically may influence environment and development policies because they suggest simple solutions to complex problems. Deforestation is a complex process driven by multiple proximate and underlying factors and a range of scales. In this study we use a multivariate statistical analysis to provide contextual explanation for deforestation in the Usumacinta River Basin based on partial pattern matching. Our approach avoided testing trivial null hypotheses of lack of association and investigated the strength and form of the response to drivers. As not all factors involved in deforestation are easily mapped as GIS layers, analytical challenges arise due to lack of a one to one correspondence between mappable attributes and drivers. We avoided testing simple statistical hypotheses such as the detectability of a significant linear relationship between deforestation and proximity to roads or water. We developed a series of informative generalised additive models based on combinations of layers that corresponded to hypotheses regarding processes. The importance of the variables representing accessibility was emphasised by the analysis. We provide evidence that land tenure is a critical factor in shaping the decision to deforest and that direct beam insolation has an effect associated with fire frequency and intensity. The effect of winter insolation was found to have many applied implications for land management. The methodology was useful for interpreting the relative importance of sets of variables representing drivers of deforestation. It was an informative approach, thus allowing the construction of a comprehensive understanding of its causes. Public Library of Science 2019-09-25 /pmc/articles/PMC6760785/ /pubmed/31553749 http://dx.doi.org/10.1371/journal.pone.0222908 Text en © 2019 Vaca et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Vaca, Raúl Abel
Golicher, Duncan John
Rodiles-Hernández, Rocío
Castillo-Santiago, Miguel Ángel
Bejarano, Marylin
Navarrete-Gutiérrez, Darío Alejandro
Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models
title Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models
title_full Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models
title_fullStr Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models
title_full_unstemmed Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models
title_short Drivers of deforestation in the basin of the Usumacinta River: Inference on process from pattern analysis using generalised additive models
title_sort drivers of deforestation in the basin of the usumacinta river: inference on process from pattern analysis using generalised additive models
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6760785/
https://www.ncbi.nlm.nih.gov/pubmed/31553749
http://dx.doi.org/10.1371/journal.pone.0222908
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