Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/3618
Title: CORRECTING FOR SAMPLE SELECTION IN STOCHASTIC FRONTIER ANALYSIS: INSIGHTS FROM RICE FARMERS IN NORTHERN GHANA
Authors: Azumah, S. B.
Donkoh, S. A.
Awuni, J. A.
Keywords: Rice production
Sample selection
Stochastic frontier
Technical efficiency
Northern Ghana
Issue Date: 2019
Publisher: Springer Nature
Series/Report no.: Vol. 7;Issue 1
Abstract: This study employs stochastic frontier analysis (SFA) correcting for sample selection bias, to determine technical efficiency (TE) and technology gap using cross-sectional data collected from 543 rice farmers in Northern Ghana. The results showed that corrected sample selection TE estimates were marginally higher. Without the appropriate corrections, inefficiency is overestimated, while the gap in performance between irrigation farmers and their rainfed counterparts is underestimated. We recommend that authorities in Ghana should work with development partners, especially in the implementation of small village-dam projects, and also to expand the existing irrigation schemes. Bunds should also be constructed around rice production valleys across northern Ghana so that farmers could expand their farm sizes to increase production. It is important also that the government’s input subsidy programme be structured to cater for experienced and younger farmers who consider agriculture as a business.
URI: http://hdl.handle.net/123456789/3618
ISSN: 2193-7532
Appears in Collections:School of Applied Economics and Management Sciences



Items in UDSspace are protected by copyright, with all rights reserved, unless otherwise indicated.