CGIAR modeling approaches for resource-constrained scenarios: II. Models for analyzing socioeconomic factors to improve policy recommendations
Date Issued
Date Online
Language
Type
Review Status
Access Rights
Usage Rights
Metadata
Full item pageCitation
Kruseman, G.; Bairagi, S.; Komarek, A. M.; Molero Milan, A.; Nedumaran, S.; Petsakos, A.; Prager, S.; Yigezu, Y. A. 2020 CGIAR modeling approaches for resource-constrained scenarios: II. Models for analyzing socioeconomic factors to improve policy recommendations. Crop Science ISSN: 0011-183X 14 p.
Permanent link to cite or share this item
External link to download this item
Abstract/Description
International crop-related research as conducted by the CGIAR uses crop modeling for a variety of purposes. By linking crop models with economic models and approaches, crop model outputs can be effectively used as inputs into socioeconomic modeling efforts for priority setting and policy advice using ex-ante impact assessment of technologies and scenario analysis. This requires interdisciplinary collaboration and very often collaboration across a variety of research organizations. This study highlights the key topics, purposes, and approaches of socioeconomic analysis within the CGIAR related to cropping systems. Although each CGIAR center has a different mission, all CGIAR centers share a common strategy of striving toward a world free of hunger, poverty, and environmental degradation. This means research is mostly focused toward resource-constrained smallholder farmers. The review covers global modeling efforts using the IMPACT model to farm household bio-economic models for assessing the potential impact of new technologies on farming systems and livelihoods. Although the CGIAR addresses all aspects of food systems, the focus of this review is on crop commodities and the economic analysis linked to crop-growth model results. This study, while not a comprehensive review, provides insights into the richness of the socioeconomic modeling endeavors within the CGIAR. The study highlights the need for interdisciplinary approaches to address the challenges this type of modeling faces.
Author ORCID identifiers
Subir Bairagi https://orcid.org/0000-0003-4473-2249
Adam M. Komarek https://orcid.org/0000-0001-5676-3005
Anabel Molero Milan https://orcid.org/0000-0001-7785-2349
Swamikannu Nedumaran https://orcid.org/0000-0003-4755-1769
Athanasios Petsakos https://orcid.org/0000-0003-0224-4087
Steven D. Prager https://orcid.org/0000-0001-9830-7008
Yigezu A. Yigezu https://orcid.org/0000-0002-9156-7082