TY - JOUR
T1 - Navigating data challenges in socioeconomic impact assessments of conservation regimes
AU - Hajjar, Reem
AU - Oldekop, Johan
AU - Toto, Roberto
AU - Alencar, Lucas
AU - Bell, Samuel D
AU - Devenish, Katie
AU - Khuu, Thuy Duong
AU - Hernandez-Montilla, Mariana
AU - Jung, Suhyun
AU - Nofyanza, Sandy
AU - Sapkota, Lok Mani
N1 - © 2025 The Author(s). Conservation Biology published by Wiley Periodicals LLC on behalf of Society for Conservation Biology.
PY - 2025/4/1
Y1 - 2025/4/1
N2 - Scholars are increasingly assessing the impact of conservation interventions at national and regional scales with robust causal inference methods designed to emulate randomized control trials (quasi-experimental methods). Although spatial and temporal data to measure habitat loss and gain with remote sensing tools are increasingly available, data to measure spatially explicit poverty and human well-being at a high resolution are far less available. Bridging this data gap is essential to assess the social outcomes of conservation actions at scale and improve understanding of socioenvironmental synergies and trade-offs. We reviewed the kinds of socioeconomic data that are publicly available to measure the effects of conservation interventions on poverty and well-being, including national census data, representative household surveys funded by international organizations, surveys collected for individual research programs, and high-resolution gridded poverty and well-being data sets. We considered 4 challenges in the use of these data sets: consistency and availability of indicators and metrics across regions and countries, availability of data at appropriate temporal and spatial resolutions, and technical considerations associated with data available in different formats. Potential workarounds to these challenges include analytical methods to help resolve data mismatches and the use of emerging data products.
AB - Scholars are increasingly assessing the impact of conservation interventions at national and regional scales with robust causal inference methods designed to emulate randomized control trials (quasi-experimental methods). Although spatial and temporal data to measure habitat loss and gain with remote sensing tools are increasingly available, data to measure spatially explicit poverty and human well-being at a high resolution are far less available. Bridging this data gap is essential to assess the social outcomes of conservation actions at scale and improve understanding of socioenvironmental synergies and trade-offs. We reviewed the kinds of socioeconomic data that are publicly available to measure the effects of conservation interventions on poverty and well-being, including national census data, representative household surveys funded by international organizations, surveys collected for individual research programs, and high-resolution gridded poverty and well-being data sets. We considered 4 challenges in the use of these data sets: consistency and availability of indicators and metrics across regions and countries, availability of data at appropriate temporal and spatial resolutions, and technical considerations associated with data available in different formats. Potential workarounds to these challenges include analytical methods to help resolve data mismatches and the use of emerging data products.
KW - 30x30
KW - Global Biodiversity Framework
KW - Data availability and accessibility
KW - Poverty and well-being indicators
KW - Quasi-experimental research designs
KW - Temporal and spatial resolution
UR - https://www.webofscience.com/api/gateway?GWVersion=2&SrcApp=pure_starter&SrcAuth=WosAPI&KeyUT=WOS:001456760900036&DestLinkType=FullRecord&DestApp=WOS_CPL
U2 - 10.1111/cobi.14457
DO - 10.1111/cobi.14457
M3 - Article
C2 - 40165705
SN - 0888-8892
VL - 39
JO - Conservation Biology
JF - Conservation Biology
IS - 2
M1 - e14457
ER -