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Investment modeling for scalable agricultural learning

Author

Listed:
  • Norman Peter Reeves
  • Rebecca Pietrelli
  • Ian Brooks
  • Victor G Sal y Rosas Celi
  • Kumpati Narendra
  • Jean C Ngabitsinze
  • Maximo Torero Cullen
  • Anne N Lutomia
  • John W Medendorp
  • Julia M Bello-Bravo
  • Barry R Pittendrigh

Abstract

With the rise of information and communication technologies, localized farmer training can be transformed into scalable strategies applicable across diverse communities, cultures, and languages. However, the economic value of these approaches and the factors shaping their returns remain underexplored. This study presents a general framework for evaluating the economic impact of scalable agricultural learning initiatives, using multilingual instructional animations and YouTube dissemination as a case study. Systems modeling was used to simulate potential returns, assess key drivers of impact, and estimate the number of farmers required for economic viability. Sensitivity analysis shows that returns are most influenced by the cost to inform an individual, adoption rates, and income gains, and to a lesser degree, technique-sharing rates and adoption costs. When existing educational content is adapted and its lifespan extended, learning initiatives can be economically viable with few targeted farmers, making the linguistic adaption into minority or rarer languages an economically viable option. The wide variation in returns across scenarios highlights the importance of tailoring models to specific contexts to obtain more precise estimates of economic impact. These findings underscore the value of adaptable and durable learning materials and suggest that future research-for-development (R4D) investments could benefit from systems modeling to identify and prioritize high-impact agricultural solutions.

Suggested Citation

  • Norman Peter Reeves & Rebecca Pietrelli & Ian Brooks & Victor G Sal y Rosas Celi & Kumpati Narendra & Jean C Ngabitsinze & Maximo Torero Cullen & Anne N Lutomia & John W Medendorp & Julia M Bello-Brav, 2026. "Investment modeling for scalable agricultural learning," PLOS ONE, Public Library of Science, vol. 21(3), pages 1-14, March.
  • Handle: RePEc:plo:pone00:0343613
    DOI: 10.1371/journal.pone.0343613
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