Abstract:
Agriculture is the main focus of Ethiopia's economic development. Wheat is one of the major
cereal crops produced by smallholder farmers in Ethiopia. Wheat demand is rising quickly in
Ethiopia despite efforts to improve wheat production. Recently, to curb this problem, the
government of Ethiopia has implemented a cluster farming system for high-potential
agricultural commodities like wheat as a means of poverty reduction and smallholders’
income maximization. In light of the problems and research gaps identified, this study seeks to
address the impact of wheat cluster farming practices on wheat productivity, technical
efficiency, and asset building among smallholder wheat producers in the Arsi zone, Oromia
Region of Ethiopia. Data were collected from a total of 383 sample wheat producer
households that were randomly selected through a multi-stage sampling technique. Both
descriptive statistics and econometric techniques were used to meet the objectives of the study.
The factors affecting wheat cluster farming participation were identified using the logit model.
The result reveals that education level, credit access, extension contacts, off/non-farm income,
and mechanization access were positively associated with wheat cluster farming adoption,
while the age of the household head and wheat farming experience were negatively associated
with wheat cluster farming adoption. The Endogenous Switching Regression model result
indicates that mechanization use, labour, extension contact, credit use, off/non-farm income,
improved seed use, urea, NPS and row planting positively and significantly affect wheat
productivity of cluster farming participants, while labour, off/non-farm income, NPS and row
planting positively and significantly affect wheat productivity of non-participants. Moreover, a
one-step stochastic frontier production model was used to identify determinants of technical
efficiency. The result reveals that extension contact, household head education level, off/non farm income, and credit accesses were factors that positively and significantly influenced the
TE of wheat producers. However, wheat production experience negatively and significantly
affected the TE of wheat producers. The ESR model's findings showed that smallholder wheat
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productivity was significantly impacted by cluster farming participation. As a result, cluster
participants increased their wheat production by about 13 qt, which is equivalent to a 42%
rise in productivity, which was also confirmed by the Propensity Score Matching result. The
ATT result indicates that the average wheat TE gain due to participation in cluster farming
ranges from 14 to 17.5%. It shows the production of wheat under cluster farming has a
promising average treatment effect. Wheat cluster farming participation has increased
smallholders' asset building ranges from ETB 8374.29 (PSM) to ETB 11664.30 (ESR) for
wheat cluster participant households as compared to non-participant wheat producer
households. The findings emanating from this study suggest that improving the supply of
agricultural input packages and providing continuous training on input utilization and wheat
farm management may improve wheat production and productivity through better
implementation of wheat cluster farming in Ethiopia, which in turn improves wheat producer’s
asset building. In addition, policymakers and stakeholders should develop strategies that help
promote and scale up wheat cluster farming implementation