Data and Code for: Big Loans to Small Businesses: Predicting Winners and Losers in an Entrepreneurial Lending Experiment
Bryan, G.
, Karlan, D. & Osman, A.
(2024).
Data and Code for: Big Loans to Small Businesses: Predicting Winners and Losers in an Entrepreneurial Lending Experiment.
[Dataset]. OpenICPSR.
https://doi.org/10.3886/e192297
We experimentally study the impact of relatively large enterprise loans in Egypt. Larger loans generate small average impacts, but machine learning using psychometric data reveals that "top-performers" (those with the highest predicted treatment effects) substantially increase profits, while profits drop for poor-performers. The large differences imply that lender credit allocation decisions matter for aggregate income, yet we find that existing practice leads to substantial misallocation. We argue that some entrepreneurs are over-optimistic and squander the opportunities presented by larger loans by taking on too much risk, and show the promise of allocations based on entrepreneurial type relative to firm characteristics.
| Item Type | Dataset |
|---|---|
| Publisher | OpenICPSR |
| DOI | 10.3886/e192297 |
| Date made available | 30 July 2024 |
| Keywords | randomized experiment |
| Temporal coverage |
From To 2016 2020 |
| Geographic coverage | Egypt |
| Resource language | Other |
| Departments | LSE |
Explore Further
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Bryan, G.
, Karlan, D. & Osman, A. (2024). Big loans to small businesses: predicting winners and losers in an entrepreneurial lending experiment. American Economic Review, 114(9), 2825 - 2860. https://doi.org/10.1257/aer.20220616 (Repository Output)
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ORCID: https://orcid.org/0009-0000-2449-930X