Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda

Rollout of development interventions using a one-size-fits-all model can achieve economies of scale but neglects to account for variability in farm and farmer characteristics. A data-driven approach to incorporate farmer diversity in scaling strategies may help to achieve greater development impact....

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Autores principales: Hammond, James, Rosenblum, Nathaniel, Breseman, Dana, Gorman, Leo, Manners, Rhys, Wijk, Mark T. van, Sibomana, Milindi, Remans, Roseline, Vanlauwe, Bernard, Schut, Marc
Formato: Journal Article
Lenguaje:Inglés
Publicado: Elsevier 2020
Materias:
Acceso en línea:https://hdl.handle.net/10568/108304
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author Hammond, James
Rosenblum, Nathaniel
Breseman, Dana
Gorman, Leo
Manners, Rhys
Wijk, Mark T. van
Sibomana, Milindi
Remans, Roseline
Vanlauwe, Bernard
Schut, Marc
author_browse Breseman, Dana
Gorman, Leo
Hammond, James
Manners, Rhys
Remans, Roseline
Rosenblum, Nathaniel
Schut, Marc
Sibomana, Milindi
Vanlauwe, Bernard
Wijk, Mark T. van
author_facet Hammond, James
Rosenblum, Nathaniel
Breseman, Dana
Gorman, Leo
Manners, Rhys
Wijk, Mark T. van
Sibomana, Milindi
Remans, Roseline
Vanlauwe, Bernard
Schut, Marc
author_sort Hammond, James
collection Repository of Agricultural Research Outputs (CGSpace)
description Rollout of development interventions using a one-size-fits-all model can achieve economies of scale but neglects to account for variability in farm and farmer characteristics. A data-driven approach to incorporate farmer diversity in scaling strategies may help to achieve greater development impact. However, interpreting the multiplicity of smallholder characteristics is complex, time-consuming, and the ways in which the insights gained can be implemented is poorly understood. Navigating these tensions, we present a farm typology study carried out in collaboration with a large development organisation (the "scaling partner") promoting agricultural inputs in Rwanda. This study was conducted late in the scaling pathway, in order to finesse the scaling strategy, rather than to target intervention selection. Drawing on nearly 3000 interviews from 17 districts of the Western, Southern, and Eastern Provinces of Rwanda, the typology differentiates households along two axes: 1. prosperity (a cornerstone of conventional typologies), and 2. adoption of inputs (fertilisers and improved crop varieties). We used an efficient household survey tool, a minimum-variable approach, and concepts from the study of adoption of agricultural innovations. Through an action-research collaboration with the scaling organisation we adapted the methods and the findings to be "actionable. Approximately two-thirds of the study population were using fertilisers and improved seed to some extent. Along each prosperity stratum, however, there were multiple degrees of adoption, demonstrating the value of including adoption information in typology constructions. Ten farm types were identified, where the key differences along the prosperity axis were land area cultivated and livestock owned, and the key differences along the adoption axis were perceptions of input efficacy, access to training, and education level. We also present a simple decision tree model to assign new households to a farm type. The findings were used in three ways by the scaling organisation: (i) characterisation of the population into discrete groups; (ii) prioritisation, of farm types for engagement, and geographical locations for further investment; and (iii) design of decision support tools or re-design of packages to support technology adoption for specific farm types. The need for field-level validation of the typologies was also stressed by the scaling organisation.
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spelling CGSpace1083042025-09-25T13:01:42Z Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda Hammond, James Rosenblum, Nathaniel Breseman, Dana Gorman, Leo Manners, Rhys Wijk, Mark T. van Sibomana, Milindi Remans, Roseline Vanlauwe, Bernard Schut, Marc agriculture farming systems intensification innovation systems Rollout of development interventions using a one-size-fits-all model can achieve economies of scale but neglects to account for variability in farm and farmer characteristics. A data-driven approach to incorporate farmer diversity in scaling strategies may help to achieve greater development impact. However, interpreting the multiplicity of smallholder characteristics is complex, time-consuming, and the ways in which the insights gained can be implemented is poorly understood. Navigating these tensions, we present a farm typology study carried out in collaboration with a large development organisation (the "scaling partner") promoting agricultural inputs in Rwanda. This study was conducted late in the scaling pathway, in order to finesse the scaling strategy, rather than to target intervention selection. Drawing on nearly 3000 interviews from 17 districts of the Western, Southern, and Eastern Provinces of Rwanda, the typology differentiates households along two axes: 1. prosperity (a cornerstone of conventional typologies), and 2. adoption of inputs (fertilisers and improved crop varieties). We used an efficient household survey tool, a minimum-variable approach, and concepts from the study of adoption of agricultural innovations. Through an action-research collaboration with the scaling organisation we adapted the methods and the findings to be "actionable. Approximately two-thirds of the study population were using fertilisers and improved seed to some extent. Along each prosperity stratum, however, there were multiple degrees of adoption, demonstrating the value of including adoption information in typology constructions. Ten farm types were identified, where the key differences along the prosperity axis were land area cultivated and livestock owned, and the key differences along the adoption axis were perceptions of input efficacy, access to training, and education level. We also present a simple decision tree model to assign new households to a farm type. The findings were used in three ways by the scaling organisation: (i) characterisation of the population into discrete groups; (ii) prioritisation, of farm types for engagement, and geographical locations for further investment; and (iii) design of decision support tools or re-design of packages to support technology adoption for specific farm types. The need for field-level validation of the typologies was also stressed by the scaling organisation. 2020-08 2020-05-23T09:04:17Z 2020-05-23T09:04:17Z Journal Article https://hdl.handle.net/10568/108304 en Open Access Elsevier Hammond, J., Rosenblum, N., Breseman, D., Gorman, L., Manners, R., van Wijk, M.T., Sibomana, M., Remans, R., Vanlauwe, B. and Schute, M. 2020. Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda. Agricultural Systems 183:102857.
spellingShingle agriculture
farming systems
intensification
innovation systems
Hammond, James
Rosenblum, Nathaniel
Breseman, Dana
Gorman, Leo
Manners, Rhys
Wijk, Mark T. van
Sibomana, Milindi
Remans, Roseline
Vanlauwe, Bernard
Schut, Marc
Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda
title Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda
title_full Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda
title_fullStr Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda
title_full_unstemmed Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda
title_short Towards actionable farm typologies: Scaling adoption of agricultural inputs in Rwanda
title_sort towards actionable farm typologies scaling adoption of agricultural inputs in rwanda
topic agriculture
farming systems
intensification
innovation systems
url https://hdl.handle.net/10568/108304
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