Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe

This data was derived from the 2018 nationwide endline survey of a project that evaluated the adoption and impact of improved bean varieties in Zimbabwe. The country, a PABRA member, was a flagship for a 2014 initiative aimed at enhancing food security and incomes through bean research. The endline...

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Autores principales: Katungi, Enid Mbabazi, Makotore, Walter, Mutua, Mercy Muli, Mutari, Bruce, Kalemera, Sylvia Monica, Maereka Enoch
Formato: Conjunto de datos
Lenguaje:Inglés
Publicado: 2025
Materias:
Acceso en línea:https://hdl.handle.net/10568/178349
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author Katungi, Enid Mbabazi
Makotore, Walter
Mutua, Mercy Muli
Mutari, Bruce
Kalemera, Sylvia Monica
Maereka Enoch
author_browse Kalemera, Sylvia Monica
Katungi, Enid Mbabazi
Maereka Enoch
Makotore, Walter
Mutari, Bruce
Mutua, Mercy Muli
author_facet Katungi, Enid Mbabazi
Makotore, Walter
Mutua, Mercy Muli
Mutari, Bruce
Kalemera, Sylvia Monica
Maereka Enoch
author_sort Katungi, Enid Mbabazi
collection Repository of Agricultural Research Outputs (CGSpace)
description This data was derived from the 2018 nationwide endline survey of a project that evaluated the adoption and impact of improved bean varieties in Zimbabwe. The country, a PABRA member, was a flagship for a 2014 initiative aimed at enhancing food security and incomes through bean research. The endline survey was implemented as an activity of the flagship initiative funded by Swiss Agency for Development and Cooperation (SDC) and Global Affairs Canada (formerly Canadian International Development Agency [CIDA]) through the Pan-Africa Bean Research Alliance (PABRA)/CIAT and the Southern Africa Bean Research Network (SABRN). The dataset was analyzed to determine the degree of influence project interventions had on bean production, the utilization of promoted technologies, and overall household welfare. Furthermore, the collection aimed to derive lessons on the efficacy and underlying reasons for the outcomes of various interventions. The data originate from a panel of households established in 2016, enabling a longitudinal analysis that accounts for time-invariant unobservable household characteristics. The dataset includes household, plot, and village-level information organized in modules: 1) Household & Location: (identification, Demographics, assets, and social networks), 2) Agricultural Practices (Bean varieties, cultivation methods, inputs, and harvests), 3) Land holding and utilization, 4) Field level data on bean area, production in previous cropping seasons 5) bean variety identification sample collection, 6) Institutional Access (Credit and agricultural services), 7) Post-Harvest & Markets (Bean utilization and marketing); 8) Non-chemical bean management strategies and post-harvest handling (ICM/IPM); 9) farmer preferences; 10) Food Security (variety Trait preferences and food security indicators) and 11) Income from others/none agriculture to your household. The data are organized into 19 separate files, each of which contains a common unique household identifier (hhid) that can be used to merge them Additional information was also collected at community level through focus group discussions, used to assess the extent of spillover effects by profiling direct and indirect intervention communities. By collecting data from the same households and communities, we aimed to address potential unobservable effects assumed to be fixed over the three years. Methodology:Trained enumerators collected data using a pre-tested digital questionnaire (CAPI) from the heads or spouses of the same households originally surveyed in 2016. This fourth-year, follow-up survey captured both household and agricultural plot-level information. To assess spillover effects, we also conducted community-level key informant interviews, profiling both direct and indirect beneficiary communities. This panel design allows for controlling unobservable, time-invariant characteristics over the three-year period.
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id CGSpace178349
institution CGIAR Consortium
language Inglés
publishDate 2025
publishDateRange 2025
publishDateSort 2025
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spelling CGSpace1783492025-11-27T15:21:33Z Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe Katungi, Enid Mbabazi Makotore, Walter Mutua, Mercy Muli Mutari, Bruce Kalemera, Sylvia Monica Maereka Enoch beans zimbabwe This data was derived from the 2018 nationwide endline survey of a project that evaluated the adoption and impact of improved bean varieties in Zimbabwe. The country, a PABRA member, was a flagship for a 2014 initiative aimed at enhancing food security and incomes through bean research. The endline survey was implemented as an activity of the flagship initiative funded by Swiss Agency for Development and Cooperation (SDC) and Global Affairs Canada (formerly Canadian International Development Agency [CIDA]) through the Pan-Africa Bean Research Alliance (PABRA)/CIAT and the Southern Africa Bean Research Network (SABRN). The dataset was analyzed to determine the degree of influence project interventions had on bean production, the utilization of promoted technologies, and overall household welfare. Furthermore, the collection aimed to derive lessons on the efficacy and underlying reasons for the outcomes of various interventions. The data originate from a panel of households established in 2016, enabling a longitudinal analysis that accounts for time-invariant unobservable household characteristics. The dataset includes household, plot, and village-level information organized in modules: 1) Household & Location: (identification, Demographics, assets, and social networks), 2) Agricultural Practices (Bean varieties, cultivation methods, inputs, and harvests), 3) Land holding and utilization, 4) Field level data on bean area, production in previous cropping seasons 5) bean variety identification sample collection, 6) Institutional Access (Credit and agricultural services), 7) Post-Harvest & Markets (Bean utilization and marketing); 8) Non-chemical bean management strategies and post-harvest handling (ICM/IPM); 9) farmer preferences; 10) Food Security (variety Trait preferences and food security indicators) and 11) Income from others/none agriculture to your household. The data are organized into 19 separate files, each of which contains a common unique household identifier (hhid) that can be used to merge them Additional information was also collected at community level through focus group discussions, used to assess the extent of spillover effects by profiling direct and indirect intervention communities. By collecting data from the same households and communities, we aimed to address potential unobservable effects assumed to be fixed over the three years. Methodology:Trained enumerators collected data using a pre-tested digital questionnaire (CAPI) from the heads or spouses of the same households originally surveyed in 2016. This fourth-year, follow-up survey captured both household and agricultural plot-level information. To assess spillover effects, we also conducted community-level key informant interviews, profiling both direct and indirect beneficiary communities. This panel design allows for controlling unobservable, time-invariant characteristics over the three-year period. 2025 2025-11-27T15:21:32Z 2025-11-27T15:21:32Z Dataset https://hdl.handle.net/10568/178349 en Open Access Katungi, E.M.; Makotore, W.; Mutua, M.M.; Mutari, B.; Kalemera, S.M.; Maereka Enoch; (2025) Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe. https://doi.org/10.7910/DVN/HU2BLN
spellingShingle beans
zimbabwe
Katungi, Enid Mbabazi
Makotore, Walter
Mutua, Mercy Muli
Mutari, Bruce
Kalemera, Sylvia Monica
Maereka Enoch
Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe
title Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe
title_full Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe
title_fullStr Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe
title_full_unstemmed Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe
title_short Bean technology adoption and its impact on smallholder farmers’ productivity, bean consumption; and food security data, Zimbabwe
title_sort bean technology adoption and its impact on smallholder farmers productivity bean consumption and food security data zimbabwe
topic beans
zimbabwe
url https://hdl.handle.net/10568/178349
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