Information in Credit Markets
Paper Session
Friday, Jan. 5, 2024 2:30 PM - 4:30 PM (CST)
- Chair: Boaz Abramson, Columbia University
Data and Welfare in Credit Markets
Abstract
We show how to measure the welfare effects arising from increased data availability.When lenders have more data on prospective borrower costs, they can charge prices that
are more aligned with these costs. This increases total social welfare and transfers surplus
from borrowers to lenders. We show that the magnitudes of the welfare changes can
be estimated using only quantity data and variation in prices. We apply the methodology
on bankruptcy flag removals and find that removing prior bankruptcy information substantially
increases the social surplus of previously bankrupt consumers, at the cost of a
modest decrease in total allocative welfare. We show how the framework can be extended
to incorporate adverse selection and imperfect competition.
FinTech Lending with LowTech Pricing
Abstract
FinTech lending-known for using big data and advanced technologies-promised to break away from the traditional credit scoring and pricing models. Using a comprehensive dataset of FinTech personal loans, our study shows that loan rates continue to rely heavily on conventional credit scores, including a 45% premium for nonprime borrowers. Other known default predictors are often neglected. Loan rates are not responsive to risk, with realized loan-level returns decreasing with risk. These patterns reflect rather simplistic and inefficient pricing. The pricing distortions result in substantial transfers from low-risk to high-risk loans.Discussant(s)
Jillian Grennan
,
University of California-Berkeley
Lulu Wang
,
Northwestern University
Tianyue Ruan
,
National University of Singapore
JEL Classifications
- G2 - Financial Institutions and Services