Résumé
We study judicial in-group bias in Indian criminal courts using newly collected data on over 5 million criminal case records from 2010–2018. After classifying gender and religious identity with a neural network, we exploit quasi-random assignment of cases to judges to determine whether judges favor defendants with similar identities to themselves. In the aggregate, we estimate tight zero effects of in-group bias based on shared gender or religion, including in settings where identity may be especially salient, such as when the victim and defendant have discordant identities. Proxying caste similarity with shared last names, we find a degree of in-group bias, but only among people with rare names; its aggregate impact remains small.
Codes JEL
- J15: Economics of Minorities, Races, Indigenous Peoples, and Immigrants • Non-labor Discrimination
- J16: Economics of Gender • Non-labor Discrimination
- K4: Legal Procedure, the Legal System, and Illegal Behavior
- O12: Microeconomic Analyses of Economic Development
Référence
Elliott Ash, Sam Asher, Aditi Bhowmick, Sandeep Bhupatiraju, Daniel L. Chen, Tanaya Devi, Christoph Goessmann, Paul Novosad et Bilal Siddiqi, « In-Group Bias in the Indian Judiciary: Evidence from 5 Million Criminal Cases », The Review of Economics and Statistics, 2025, p. 1–45.
Publié dans
The Review of Economics and Statistics, 2025, p. 1–45
