2020
DOI: 10.1017/s0030605319000735
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Effects of integrated conservation–development projects on unauthorized resource use in Volcanoes National Park, Rwanda: a mixed-methods spatio-temporal approach

Abstract: This study supplements spatial panel econometrics techniques with qualitative GIS to analyse spatio-temporal changes in the distribution of integrated conservation–development projects relative to poaching activity and unauthorized resource use in Volcanoes National Park, Rwanda. Cluster and spatial regression analyses were performed on data from ranger monitoring containing > 35,000 combined observations of illegal activities in Volcanoes National Park, against tourism revenue sharing and conservation NGO … Show more

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Cited by 11 publications
(19 citation statements)
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References 35 publications
(65 reference statements)
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“…With the inclusion of the spatial neighborhood, we find a weak positive impact of protected area, with a greater negative effect from surrounding protected area. This could show that in the context of a larger area, protected areas might displace disturbances to 25-50 km beyond their borders, where they can attract development and similar activities when local communities benefit from protected areas, or use its resources, indicating a potential leakage effect (Sabuhoro et al, 2017;Bernhard et al, 2020).…”
Section: Discussionmentioning
confidence: 99%
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“…With the inclusion of the spatial neighborhood, we find a weak positive impact of protected area, with a greater negative effect from surrounding protected area. This could show that in the context of a larger area, protected areas might displace disturbances to 25-50 km beyond their borders, where they can attract development and similar activities when local communities benefit from protected areas, or use its resources, indicating a potential leakage effect (Sabuhoro et al, 2017;Bernhard et al, 2020).…”
Section: Discussionmentioning
confidence: 99%
“…Although deforestation and degradation can be closely correlated (Defourny et al, 2011), they differ fundamentally in terms of definition and impacts on ecosystem services. The quantification of drivers of deforestation and degradation is not only important for targeting national strategies to reduce the emissions from deforestation and degradation (REDD+), but have wide applications to sustainable development initiatives supporting local economies as well as conservation efforts seeking to reverse or slow the significant downward trends in forest cover and quality (Bernhard et al, 2020). A proper understanding of the proximate causes and determinants of degradation is essential for aligning policies with the appropriate actors (Tegegne et al, 2016), but available quantitative information on degradation drivers and how they interact at various scales is still quite limited.…”
Section: Introductionmentioning
confidence: 99%
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“…We modeled underlying macroeconomic determinants of deforestation using the following simple linear OLS estimation with spatially lagged explanatory variables: (Bernhard et al, 2020;Gibbons et. al, 2012;Angelsen and Kaimowitz, 1999) where '(## #$ is tree cover loss by district ) and year *.…”
Section: Spatial and Econometric Analysismentioning
confidence: 99%
“…FG(( &' = Q & + R ' + S &+' + P &+' (Bernhard et al, 2020;Hsiang and Sekar, 2016) 4 # is the sector fixed effect, 5 $ is time (year). 6 #%$ is a vector of time-varying socioeconomic conditions at district level ), and provincial level 7, including poverty rates, education levels, proxy for off-farm wages (proximity to urban area), proxy for human development (nighttime lights) at time *.…”
Section: Spatial and Econometric Analysismentioning
confidence: 99%