Parametric and machine learning approaches to examine yield differences between control and treatment considering outliers and statistical biases: The case of insect resistant/herbicide tolerant (IR/HT) maize in Honduras

cg.authorship.typesCGIAR and developing country instituteen
cg.authorship.typesCGIAR single centreen
cg.contributor.affiliationInternational Food Policy Research Instituteen
cg.contributor.affiliationUniversidad Zamoranoen
cg.contributor.donorTempleton Foundationen
cg.contributor.donorUniversity of Californiaen
cg.contributor.donorUnited States Agency for International Developmenten
cg.coverage.countryHonduras
cg.coverage.regionLatin America and the Caribbean
cg.coverage.regionCentral America
cg.creator.identifierJosé B. Falck-Zepeda: 0000-0002-8604-7154en
cg.creator.identifierPatricia Zambrano: 0000-0002-3324-1324en
cg.howPublishedGrey Literatureen
cg.identifier.projectIFPRI - Innovation Policy and Scaling Uniten
cg.identifier.publicationRankNot rankeden
cg.number2334en
cg.placeWashington, DCen
cg.reviewStatusInternal Reviewen
cg.subject.impactAreaPoverty reduction, livelihoods and jobs
dc.contributor.authorFalck-Zepeda, José B.en
dc.contributor.authorZambrano, Patriciaen
dc.contributor.authorSanders, Arieen
dc.contributor.authorTrabanino, Carlos Rogelioen
dc.date.accessioned2025-04-25T16:03:58Zen
dc.date.available2025-04-25T16:03:58Zen
dc.identifier.urihttps://hdl.handle.net/10568/174327
dc.titleParametric and machine learning approaches to examine yield differences between control and treatment considering outliers and statistical biases: The case of insect resistant/herbicide tolerant (IR/HT) maize in Hondurasen
dcterms.abstractRobust impact assessment methods need credible yield, costs, and other production performance parameter estimates. Sample data issues and the realities of producer heterogeneity and markets, including endogeneity, simultaneity, and outliers can affect such parameters. Methods have continued to evolve that may address data issues identified in the earlier literature examining genetically modified (GM) crops impacts especially those of conventional field level surveys. These methods may themselves have limitations, introduce trade-offs, and may not always be successful in addressing such issues. Experimental methods such as randomized control trials have been proposed to address several control treatment data issues, but these may not be suitable for every situation and issue and may be more expensive and complex than conventional field surveys. Furthermore, experimental methods may induce the unfortunate outcome of crowding-out impact assessors from low- and middle-income countries. The continued search for alternatives that help address conventional survey shortcomings remains critical. Previously, existing assessment methods were applied to the impact assessment of insect resistant and herbicide tolerant maize adoption in Honduras in 2008 and 2012. Results from assessments identified endogeneity issues such as self-selection and simultaneity concurrently with influential outliers. Procedures used to address these issues independently showed trade-offs between addressing endogeneity and outliers. Thus, the need to identify methods that address both issues simultaneously, minimizing as much as possible the impact of method trade-offs, continues. We structured this paper as follows. First, we review the literature to delineate data and assessment issues potentially affecting robust performance indicators such as yields and costs differentials. Second, we discuss and apply four types of approaches that can be used to obtain robust performance estimates for yield and cost differentials including: 1) Robust Instrumental Variables, 2) Instrumental Variable Regressions, and 3) Control/Treatment, and 4) Machine Learning methods that are amenable to robust strategies to deal with outliers including Random Forest and a Stacking regression approach that allows for a number of “base learners” in order to examine the pooled 2008 and 2012 Honduras field surveys. Third, we discuss implications for impact assessment results and implementation limitations especially in low- and middle-income countries. We further discuss and draw some conclusions regarding methodological issues for consideration by impact assessors and stakeholders.en
dcterms.accessRightsOpen Access
dcterms.audienceAcademicsen
dcterms.bibliographicCitationFalck-Zepeda, José B.; Zambrano, Patricia; Sanders, Arie; and Trabanino, Carlos Rogelio. 2025. Parametric and machine learning approaches to examine yield differences between control and treatment considering outliers and statistical biases: The case of insect resistant/herbicide tolerant (IR/HT) maize in Honduras. IFPRI Discussion Paper 2334. Washington, DC: International Food Policy Research Institute. https://hdl.handle.net/10568/174327en
dcterms.extent44 p.en
dcterms.isPartOfIFPRI Discussion Paperen
dcterms.issued2025-04-24en
dcterms.languageen
dcterms.licenseCopyrighted; all rights reserved
dcterms.publisherInternational Food Policy Research Instituteen
dcterms.subjectmaizeen
dcterms.subjectyieldsen
dcterms.subjectimpact assessmenten
dcterms.subjectagricultureen
dcterms.subjectdataen
dcterms.subjectcapacity buildingen
dcterms.subjectmachine learningen
dcterms.subjectparametric programmingen
dcterms.subjectherbicide resistanceen
dcterms.typeWorking Paper

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