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Experimental Evidence on Adoption and Impact of the System of Rice Intensification

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  • Christopher B. Barrett
  • Asad Islam
  • Abdul Mohammad Malek
  • Debayan Pakrashi
  • Ummul Ruthbah

Abstract

We report the results of a large‐scale, multi‐year experimental evaluation of the System of Rice Intensification (SRI), an innovation that first emerged in Madagascar in the 1980s and has now diffused to more than fifty countries. Using a randomized training saturation design with a pure control group, we find that greater cross‐sectional or intertemporal intensity of direct or indirect training exposure to SRI has a sizable, positive effect on Bangladeshi farmers' propensity to adopt (and not to disadopt) SRI. We find large, positive, and significant impacts of SRI training on rice yields and profits, as well as multiple household well‐being indicators, for both trained and untrained farmers in training villages. We also find high rates of disadoption, and clear indications of non‐random selection into technology adoption conditional on randomized exposure to training, such that adopters and non‐adopters within the same treatment arm experience similar outcomes. Rice yields, profits, and household well‐being outcomes do not, however, vary at the intensive margin with intensity of training exposure, a finding consistent with multi‐object learning models.

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  • Christopher B. Barrett & Asad Islam & Abdul Mohammad Malek & Debayan Pakrashi & Ummul Ruthbah, 2022. "Experimental Evidence on Adoption and Impact of the System of Rice Intensification," American Journal of Agricultural Economics, John Wiley & Sons, vol. 104(1), pages 4-32, January.
  • Handle: RePEc:wly:ajagec:v:104:y:2022:i:1:p:4-32
    DOI: 10.1111/ajae.12245
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    2. Guven, Cahit & Tong, Lan & Ulubasoglu, Mehmet, 2021. "Growing More Rice with Less Water: The System of Rice Intensification and Rice Productivity in Vietnam," MPRA Paper 108768, University Library of Munich, Germany.
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    5. Malek, Mohammad Abdul & Kikkawa, Aiko & Azad, Abul Kalam & Sawada, Yasuyuki, 2022. "Rural Development in Bangladesh Over Four Decades: Findings from Mahabub Hossain Panel Data and the Way Forward," ADBI Working Papers 1350, Asian Development Bank Institute.
    6. Tong, Lan Anh & Ulubasoglu, Mehmet Ali & Guven, Cahit, 2022. "Growing more Rice with less water: the System of Rice Intensification and water productivity in Vietnam," Australian Journal of Agricultural and Resource Economics, Australian Agricultural and Resource Economics Society, vol. 66(03), January.
    7. Lisa Capretti, 2023. "Technology adoption constraints and Laser Land Levelling: evidence from Karnataka, India," Working Papers 1/23, Sapienza University of Rome, DISS.
    8. Islam, Asadul & Ushchev, Philip & Zenou, Yves & Zhang, Xin, 2019. "The Value of Information in Technology Adoption," IZA Discussion Papers 12672, Institute of Labor Economics (IZA).
    9. Du, Zhushan & Feng, Hongli & Arbuckle, J. Gordon, 2024. "Beyond cross-sectional, one-time adoption measures of conservation practices: Understanding temporal adoption patterns using farm-level panel data," 2024 Annual Meeting, July 28-30, New Orleans, LA 344010, Agricultural and Applied Economics Association.
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