Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity

Agriculture growth in Africa is often characterized by low aggregate levels of technology adoption. Recent evidence, however, points to co-existence of substantial adoption heterogeneities across farm households and a lack of a suitable mix of inputs for farmers to take advantage of input complement...

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Main Authors: Abay, Kibrom A., Berhane, Guush, Taffesse, Alemayehu Seyoum, Koru, Bethlehem, Abay, Kibrewossen
Format: Artículo preliminar
Language:Inglés
Published: International Food Policy Research Institute 2016
Subjects:
Online Access:https://hdl.handle.net/10568/148560
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author Abay, Kibrom A.
Berhane, Guush
Taffesse, Alemayehu Seyoum
Koru, Bethlehem
Abay, Kibrewossen
author_browse Abay, Kibrewossen
Abay, Kibrom A.
Berhane, Guush
Koru, Bethlehem
Taffesse, Alemayehu Seyoum
author_facet Abay, Kibrom A.
Berhane, Guush
Taffesse, Alemayehu Seyoum
Koru, Bethlehem
Abay, Kibrewossen
author_sort Abay, Kibrom A.
collection Repository of Agricultural Research Outputs (CGSpace)
description Agriculture growth in Africa is often characterized by low aggregate levels of technology adoption. Recent evidence, however, points to co-existence of substantial adoption heterogeneities across farm households and a lack of a suitable mix of inputs for farmers to take advantage of input complementarities, thereby limiting the potential for learning towards the use of an optimal mix of inputs. We use a detailed large longitudinal dataset from Ethiopia to understand the significance of input complementarities, unobserved heterogeneities, and dynamic learning behavior of farmers facing multiple agricultural technologies. We introduce a random coefficients multivariate probit model, which enables us to quantify the complementarities between agricultural inputs, while also controlling for alternative forms of unobserved heterogeneity effects. The empirical analysis reveals that, conditional on various types of unobserved heterogeneity effects, technology adoption exhibits strong complementarity (about 70 percent) between chemical fertilizers and improved seeds, and relatively weaker complementarity (between 6 and 23 percent) between these two inputs and extension services. Stronger complementarities are observed between specific extension services (advice on land preparation) and improved seed and chemical fertilizers, as opposed to simple visits by extension agents, suggesting that additional benefits can be gained if the extension system is backed by “knowledge” inputs and not just focus on “nudging” of farmers to use these inputs. The analysis also uncovers substantial unobserved heterogeneity effects, which induce heterogeneous impacts in the effect of the explanatory variables among farmers with similar observable characteristics. We also show that ignoring these behavioral features bears important implications in quantifying the effect of some policy interventions which are meant to facilitate technology adoption. For instance, ignoring these features leads to significant overestimation of the effectiveness of extension services in facilitating technology adoption. We also document strong learning behavior, a process that involves learning-by-doing as well as learning from extension agents.
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spelling CGSpace1485602025-11-06T06:49:35Z Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity Abay, Kibrom A. Berhane, Guush Taffesse, Alemayehu Seyoum Koru, Bethlehem Abay, Kibrewossen technology adoption agricultural growth farm inputs probit analysis Agriculture growth in Africa is often characterized by low aggregate levels of technology adoption. Recent evidence, however, points to co-existence of substantial adoption heterogeneities across farm households and a lack of a suitable mix of inputs for farmers to take advantage of input complementarities, thereby limiting the potential for learning towards the use of an optimal mix of inputs. We use a detailed large longitudinal dataset from Ethiopia to understand the significance of input complementarities, unobserved heterogeneities, and dynamic learning behavior of farmers facing multiple agricultural technologies. We introduce a random coefficients multivariate probit model, which enables us to quantify the complementarities between agricultural inputs, while also controlling for alternative forms of unobserved heterogeneity effects. The empirical analysis reveals that, conditional on various types of unobserved heterogeneity effects, technology adoption exhibits strong complementarity (about 70 percent) between chemical fertilizers and improved seeds, and relatively weaker complementarity (between 6 and 23 percent) between these two inputs and extension services. Stronger complementarities are observed between specific extension services (advice on land preparation) and improved seed and chemical fertilizers, as opposed to simple visits by extension agents, suggesting that additional benefits can be gained if the extension system is backed by “knowledge” inputs and not just focus on “nudging” of farmers to use these inputs. The analysis also uncovers substantial unobserved heterogeneity effects, which induce heterogeneous impacts in the effect of the explanatory variables among farmers with similar observable characteristics. We also show that ignoring these behavioral features bears important implications in quantifying the effect of some policy interventions which are meant to facilitate technology adoption. For instance, ignoring these features leads to significant overestimation of the effectiveness of extension services in facilitating technology adoption. We also document strong learning behavior, a process that involves learning-by-doing as well as learning from extension agents. 2016-02-12 2024-06-21T09:25:03Z 2024-06-21T09:25:03Z Working Paper https://hdl.handle.net/10568/148560 en Open Access application/pdf International Food Policy Research Institute Ethiopian Development Research Institute Abay, Kibrom A.; Berhane, Guush; Taffesse, Alemayehu Seyoum; Koru, Bethlehem; and Abay, Kibrewossen. 2016. Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity. ESSP Working Paper 82. Washington, DC and Addis Ababa, Ethiopia: International Food Policy Research Institute (IFPRI) and Ethiopian Development Research Institute (EDRI). https://hdl.handle.net/10568/148560
spellingShingle technology adoption
agricultural growth
farm inputs
probit analysis
Abay, Kibrom A.
Berhane, Guush
Taffesse, Alemayehu Seyoum
Koru, Bethlehem
Abay, Kibrewossen
Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity
title Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity
title_full Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity
title_fullStr Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity
title_full_unstemmed Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity
title_short Understanding farmers’ technology adoption decisions: Input complementarity and heterogeneity
title_sort understanding farmers technology adoption decisions input complementarity and heterogeneity
topic technology adoption
agricultural growth
farm inputs
probit analysis
url https://hdl.handle.net/10568/148560
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AT taffessealemayehuseyoum understandingfarmerstechnologyadoptiondecisionsinputcomplementarityandheterogeneity
AT korubethlehem understandingfarmerstechnologyadoptiondecisionsinputcomplementarityandheterogeneity
AT abaykibrewossen understandingfarmerstechnologyadoptiondecisionsinputcomplementarityandheterogeneity