Abstract:
The study designed particularly on the identification of factors determining adoption of
improved food legume technologies, evaluation of impacts of adoption status and intensity of
improved food legume varieties, identifying intra-household impact dynamics due to adoption
of improved legume varieties and spotting out the major challenges and opportunities faced by
smallholders in their adoption of improved food legume technologies. This study used cross
sectional data acquired from a total of 600 households, which were randomly and
proportionately sampled from 12 major legume producer kebeles in 3 districts of Bale
highlands by using three-stage sampling technique. Probit and Clog-log binary model were
estimated to identify the underlying factors that determined adoption of improved food legume
technologies. PSM model was estimated to evaluate the impacts of adoption status of
improved food legume varieties. In addition, continuous treatment effects model (GPS) was
also employed to estimate the impact of intensity of adoption on farm households by
discarding non-adopters from the analysis. The results from probit and clog-log indicate that
age, livestock holding, farm size, membership in farmers cooperatives, contact with
agricultural research center, household head participation in off-farm activity, distance from
agricultural extension office and main market; and district dummy were factors that
significantly determined farmers decision to adopt improved food legume technologies. The
outputs from PSM indicated that adoption of improved food legume varieties has positive and
significant impact on the income and the adopters receive 25% higher income than nonadopters.
The intra household analysis indicated that households with productive labor force
receive better income while households with economically dependents female members receive
considerably lower income from adoption of improved food legume varieties, suggesting the
prevalent intra-household differences. The result of GPS also confirms the positive effect of
intensity of adoption on income, consumption expenditure and calorie intake. The study also
indicates that adoption of improved food legume technologies can motivate farmers to shift
from the mono-cropping system to diversified one, improve household’s income and they are
the major source of protein. However, adoption of improved food legume technologies is
highly constrained by labor-intensive nature of production, lack of improved food legume
technologies especially water logging tolerant varieties and market irregularities. The results
suggests the need to design interventions enhancing adoption of food legume technologies
focusing on improving adoption rates and minimizing intra household differences in income.