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The Cost of Misclassification of Seeds: Evidence from Improved Maize Variety Adopters in Ethiopia

  1. Title statementThe Cost of Misclassification of Seeds: Evidence from Improved Maize Variety Adopters in Ethiopia [rukopis] / Dibekulu Mulu Birhan
    Additional Variant TitlesImproved seed adoption: misclassification and suboptimal decision
    Personal name Birhan, Dibekulu Mulu, (dissertant)
    Translated titleImproved seed adoption: misclassification and suboptimal decision
    Issue data2021
    Phys.des.IX, 42 : mapy, grafy, schémata, tab. + 5 figures, 10 tables
    NoteVed. práce Maria Sassi
    Oponent Gopal Trital
    Another responsib. Sassi, Maria, (thesis advisor)
    Trital, Gopal, (opponent)
    Another responsib. Univerzita Palackého. Katedra rozvojových studií (degree grantor)
    Keywords Keywords: Misclassification * Improved seed * Propensity score matching * DNA fingerprinting * Self-reporting * False-negative * True-positive * Keywords: Misclassification * Improved seed * Propensity score matching * DNA fingerprinting * Self-reporting * False-negative * True-positive
    Form, Genre diplomové práce master's theses
    UDC (043)378.2
    CountryČesko
    Languageangličtina
    Document kindPUBLIKAČNÍ ČINNOST
    TitleMgr.
    Degree programNavazující
    Degree programGeography
    Degreee disciplineInternational Development Studies
    book

    book

    Kvalifikační práceDownloadedSizedatum zpřístupnění
    00274370-266773248.pdf61.2 MB31.05.2021
    PosudekTyp posudku
    00274370-ved-453916315.pdfPosudek vedoucího
    00274370-opon-610228420.pdfPosudek oponenta

    Improved seed adopters in developing countries are likely to misclassify the adopted variety as a landrace due to challenges such as dominant informal seed market, poor seed certification system, and widespread seed recycling practice that surround the agriculture sector. Improved seeds need differential treatment in terms of the supply of farm inputs for optimal farm production. Misclassification error could lead to suboptimal allocation of the inputs and thus cause a loss of potential yield. The purpose of this study is to estimate the loss of the yield attributable to the misclassification measurement error. Employing a combination of DNA fingerprinting and self-reporting cross-sectional plot-level data, the study analyzed the yield loss in the 2018/19 cropping season by Ethiopian farmers who adopted improved maize varieties using the propensity score matching technique. The seed adopted on 61% of the plots is found misclassified (false-negative adopters). The misclassification borne yield loss found is considerable. The average maize yield from false-negative plots is less in the range of 609 to 776 kgs per hectare than from true-positive counterfactuals. Although this study sheds light on the causal impact of misclassification on yield, given it is the first empirical investigation on the topic, further studies are needed to verify the robustness and generalizability of the findings.Improved seed adopters in developing countries are likely to misclassify the adopted variety as a landrace due to challenges such as dominant informal seed market, poor seed certification system, and widespread seed recycling practice that surround the agriculture sector. Improved seeds need differential treatment in terms of the supply of farm inputs for optimal farm production. Misclassification error could lead to suboptimal allocation of the inputs and thus cause a loss of potential yield. The purpose of this study is to estimate the loss of the yield attributable to the misclassification measurement error. Employing a combination of DNA fingerprinting and self-reporting cross-sectional plot-level data, the study analyzed the yield loss in the 2018/19 cropping season by Ethiopian farmers who adopted improved maize varieties using the propensity score matching technique. The seed adopted on 61% of the plots is found misclassified (false-negative adopters). The misclassification borne yield loss found is considerable. The average maize yield from false-negative plots is less in the range of 609 to 776 kgs per hectare than from true-positive counterfactuals. Although this study sheds light on the causal impact of misclassification on yield, given it is the first empirical investigation on the topic, further studies are needed to verify the robustness and generalizability of the findings.

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