Literature DB >> 32343014

Effects of spatial autocorrelation and sampling design on estimates of protected area effectiveness.

Pablo Jose Negret1,2, Moreno Di Marco2,3, Laura J Sonter1,2, Jonathan Rhodes1, Hugh P Possingham2,4, Martine Maron1,2.   

Abstract

Estimating the effectiveness of protected areas (PAs) in reducing deforestation is useful to support decisions on whether to invest in better management of areas already protected or to create new ones. Statistical matching is commonly used to assess this effectiveness, but spatial autocorrelation and regional differences in protection effectiveness are frequently overlooked. Using Colombia as a case study, we employed statistical matching to account for confounding factors in park location and accounted for for spatial autocorrelation to determine statistical significance. We compared the performance of different matching procedures-ways of generating matching pairs at different scales-in estimating PA effectiveness. Differences in matching procedures affected covariate similarity between matched pairs (balance) and estimates of PA effectiveness in reducing deforestation. Independent matching yielded the greatest balance. On average 95% of variables in each region were balanced with independent matching, whereas 33% of variables were balanced when using the method that performed worst. The best estimates suggested that average deforestation inside protected areas in Colombia was 40% lower than in matched sites. Protection significantly reduced deforestation, but PA effectiveness differed among regions. Protected areas in Caribe were the most effective, whereas those in Orinoco and Pacific were least effective. Our results demonstrate that accounting for spatial autocorrelation and using independent matching for each subset of data is needed to infer the effectiveness of protection in reducing deforestation. Not accounting for spatial autocorrelation can distort the assessment of protection effectiveness, increasing type I and II errors and inflating effect size. Our method allowed improved estimates of protection effectiveness across scales and under different conditions and can be applied to other regions to effectively assess PA performance.
© 2020 Society for Conservation Biology.

Entities:  

Keywords:  Colombia; emparejamiento estadístico; forest loss; general linear mixed models; human pressure; modelos autorregresivos simultáneos; modelos mixtos lineales generalizados; national park; parque natural; presión humana; pérdida del bosque; simultaneous autoregressive models; statistical matching; 噪音污染; 城市化; 声污染; 干扰; 野生生物

Year:  2020        PMID: 32343014     DOI: 10.1111/cobi.13522

Source DB:  PubMed          Journal:  Conserv Biol        ISSN: 0888-8892            Impact factor:   6.560


  2 in total

1.  Southeast Asian protected areas are effective in conserving forest cover and forest carbon stocks compared to unprotected areas.

Authors:  Victoria Graham; Jonas Geldmann; Vanessa M Adams; Pablo Jose Negret; Pablo Sinovas; Hsing-Chung Chang
Journal:  Sci Rep       Date:  2021-12-09       Impact factor: 4.379

Review 2.  Reference state and benchmark concepts for better biodiversity conservation in contemporary ecosystems.

Authors:  Megan J McNellie; Ian Oliver; Josh Dorrough; Simon Ferrier; Graeme Newell; Philip Gibbons
Journal:  Glob Chang Biol       Date:  2020-10-23       Impact factor: 10.863

  2 in total

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