期刊
CONSERVATION BIOLOGY
卷 37, 期 4, 页码 -出版社
WILEY
DOI: 10.1111/cobi.14058
关键词
conservation; deforestation; machine learning; Mexico; random forest
Protected areas (PAs) are effective in confronting forest conversion and biodiversity loss. However, conventional modeling assumptions limit the understanding of the drivers of deforestation. This study used random forest regression to identify the strongest predictors of deforestation in PAs in Mexico, considering nonlinear relationships and higher order interactions. Socioeconomic drivers and biophysical conditions were found to be stronger predictors of forest loss than PA characteristics. The results can guide the allocation of PA resources and help protect vulnerable biodiversity areas.
Protected areas (PAs) are a commonly used strategy to confront forest conversion and biodiversity loss. Although determining drivers of forest loss is central to conservation success, understanding of them is limited by conventional modeling assumptions. We used random forest regression to evaluate potential drivers of deforestation in PAs in Mexico, while accounting for nonlinear relationships and higher order interactions underlying deforestation processes. Socioeconomic drivers (e.g., road density, human population density) and underlying biophysical conditions (e.g., precipitation, distance to water, elevation, slope) were stronger predictors of forest loss than PA characteristics, such as age, type, and management effectiveness. Within PA characteristics, variables reflecting collaborative and equitable management and PA size were the strongest predictors of forest loss, albeit with less explanatory power than socioeconomic and biophysical variables. In contrast to previously used methods, which typically have been based on the assumption of linear relationships, we found that the associations between most predictors and forest loss are nonlinear. Our results can inform decisions on the allocation of PA resources by strengthening management in PAs with the highest risk of deforestation and help preemptively protect key biodiversity areas that may be vulnerable to deforestation in the future.
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