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Nonclassical Measurement Error and Farmers’ Response to Information Reveal Behavioral Anomalies

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  • Abay,Kibrom A.
  • Barrett,Christopher B.
  • Kilic,Talip
  • Moylan,Heather G.
  • Ilukor,John
  • Vundru,Wilbert Drazi

Abstract

This paper reports on a randomized experiment conducted among Malawian agricultural householdsto study nonclassical measurement error in self-reported plot area and farmers’ responses to new information (theobjective plot area measure) that was provided to correct nonclassical measurement error. Farmers' pre-treatmentself-reported plot areas exhibit considerable nonclassical measurement error, most of which follows aregression-to-mean pattern with respect to plot area, and another 18 percent of which arises from asymmetric roundingto half-acre increments. Randomized provision of GPS-based measures of true plot area generates four importantfindings. First, farmers incompletely update mistaken self-reports; most nonclassical measurement error persistseven after the provision of true plot area measures. Second, farmers update asymmetrically in response to information,with upward corrections being far more common than downward ones even though most plot sizes were initiallyoverestimated. Third, the magnitude of updating varies by true plot area and the magnitude and direction of initialnonclassical measurement error. Fourth, the information treatment affects self-reported information about non-landinputs, such as fertilizer and labor, indicating that the effects of measurement error and updating spill over acrossvariables. Nonclassical measurement error reflects behavioral anomalies and carries implications for bothsurvey data collection methods and the design of information-based interventions.

Suggested Citation

  • Abay,Kibrom A. & Barrett,Christopher B. & Kilic,Talip & Moylan,Heather G. & Ilukor,John & Vundru,Wilbert Drazi, 2022. "Nonclassical Measurement Error and Farmers’ Response to Information Reveal Behavioral Anomalies," Policy Research Working Paper Series 9908, The World Bank.
  • Handle: RePEc:wbk:wbrwps:9908
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