The Missing Transfers: Estimating Misreporting in Dyadic Data
Margherita Comola () and
Marcel Fafchamps
PSE-Ecole d'économie de Paris (Postprint) from HAL
Abstract:
Many studies have used self-reported dyadic data without exploiting the pattern of discordant answers. In this article we propose a maximum likelihood estimator that deals with misreporting in a systematic way. We illustrate the methodology using dyadic data on interhousehold transfers from the village of Nyakatoke in Tanzania. We show that not taking reporting bias into account leads to serious underestimation of the total amount of transfers between villagers. We also provide suggestive evidence that reporting bias can affect inference about estimated coefficients. The method introduced here is applicable whenever the researcher has two discordant measurements of the same dependent variable.
Date: 2017-04
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Citations: View citations in EconPapers (8)
Published in Economic Development and Cultural Change, 2017, 65 (3), pp.549-582. ⟨10.1086/690810⟩
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Related works:
Journal Article: The Missing Transfers: Estimating Misreporting in Dyadic Data (2017) 
Working Paper: The Missing Transfers: Estimating Misreporting in Dyadic Data (2017)
Working Paper: The Missing Transfers: Estimating Mis-reporting in Dyadic Data (2016)
Working Paper: The Missing Transfers: Estimating Mis-reporting in Dyadic Data (2016)
Working Paper: The Missing Transfers: Estimating Mis-reporting in Dyadic Data (2016)
Working Paper: The Missing Transfers: Estimating Mis-reporting in Dyadic Data (2015) 
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Persistent link: https://EconPapers.repec.org/RePEc:hal:pseptp:halshs-01630358
DOI: 10.1086/690810
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