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Spillovers as a Driver to Reduce Ex-post Inequality Generated by Randomized Experiments: Evidence from an Agricultural Training Intervention

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  • Kazushi Takahashi
  • Yukichi Mano
  • Keijiro Otsuka

Abstract

Randomized experiments ensure equal opportunities but could generate unequal outcomes by treatment status, which can be socially costly. This study demonstrates a sequential intervention to conduct rigorous impact evaluation and subsequently to mitigate ‘“experiment-driven’ driven” inequality, using Cote d’Ivoire as a case. Specifically, control farmers were initially restricted from exchanging information with treated farmers, who received rice management training, to satisfy the stable unit treatment value assumption. We then encouraged information exchange between the two groups of farmers one year after the training. We found positive training effects, but initial performance gaps created by our randomized assignment disappeared over time because of information spillovers and, hence, eventually control farmers also benefitted from our experiment.

Suggested Citation

  • Kazushi Takahashi & Yukichi Mano & Keijiro Otsuka, 2018. "Spillovers as a Driver to Reduce Ex-post Inequality Generated by Randomized Experiments: Evidence from an Agricultural Training Intervention," Working Papers 174, JICA Research Institute.
  • Handle: RePEc:jic:wpaper:174
    DOI: 10.18884/00000925
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    Keywords

    Inequality; Program evaluation; Randomised experiment; Spillover;
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