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https://repository.iimb.ac.in/handle/2074/22243
Title: | How costly are cultural biases? Evidence from FinTech | Authors: | Rossi, Alberto Ghosh, Pulak D'Acunto, Francesco |
Keywords: | Taste-based Discrimination;Statistical Discrimination;Cultural Finance;Robo-Advising;Lending;Disintermediation;Cultural Economics | Issue Date: | 2023 | Abstract: | We study the nature and effects of cultural biases in choice under risk and uncertainty by comparing peer-to-peer loans the same individuals (lenders) make alone and after observing robo-advised suggestions. When unassisted, lenders are more likely to choose co-ethnic borrowers, facing 8% higher defaults and 7.3pp lower returns. Robo-advising does not affect diversification but reduces lending to high-risk co-ethnic borrowers. Lenders in locations with high inter-ethnic animus drive the results, even when borrowers reside elsewhere. Biased beliefs explain these results better than a conscious taste for discrimination: lenders barely override robo-advised matches to ethnicities they discriminated against when unassisted. | URI: | https://repository.iimb.ac.in/handle/2074/22243 |
Appears in Collections: | 2020-2029 C |
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