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Technical Efficiency of Moringa Production: A case Study in Wolaita and Gamo Zones, Southern Ethiopia

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  • Tafesse, Alula
  • Goshu, Degye
  • Gelaw, Fedaku
  • Ademe, Alelign

Abstract

Moringa has been becoming among vastly growing and trading commodities in different parts of Ethiopia for its multiple benefits. However, empirical researches analyzing its productivity at smallholder farmer level were missing. This study aimed to fill the existing gap with a cross-sectional survey study on sampled 117 Moringa producer farmers from southern Ethiopia. The Stochastic Frontier Model was used to estimate the level and factors determining the technical efficiency of Moringa production. The collected data fitted Cobb-Douglas production function with inputs, labor and the numbers of trees positively and significantly determined the output of Moringa. An estimated level of efficiency shows farmers have the possibility to increase Moringa output by 47.81% with existing inputs and technology. The land, off-farm activities, access to road, credit, and irrigation were significant factors affecting the technical efficiency of Moringa. It requires policies and development actions to perform on mechanisms to advance the production of Moringa. Hence, any development direction to enhance Moringa production should consider households with limited access to land and irrigation. Furthermore, the development of road infrastructure is required to increase agricultural productivity. In sum, modern credit institutions, as well as facilities, found essential to improve the livelihood of Moringa producers in the area.

Suggested Citation

  • Tafesse, Alula & Goshu, Degye & Gelaw, Fedaku & Ademe, Alelign, 2020. "Technical Efficiency of Moringa Production: A case Study in Wolaita and Gamo Zones, Southern Ethiopia," Sustainable Agriculture Research, Canadian Center of Science and Education, vol. 9(2).
  • Handle: RePEc:ags:ccsesa:309768
    DOI: 10.22004/ag.econ.309768
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    References listed on IDEAS

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