P2P Lending: Information Externalities, Social Networks and Loans' Substitution

65 Pages Posted: 29 Aug 2017

See all articles by Ester Faia

Ester Faia

Goethe University Frankfurt

Monica Paiella

CSEF - University of Naples Federico II

Date Written: August 2017

Abstract

Despite the lack of delegated monitor and of collateral guarantees P2P lending platforms exhibit relatively low loan and delinquency rates. The adverse selection is indeed mitigated by a new screening technology (information processing through machine learning) that provides costless public signals. Using data from Prosper and Lending Club we show that loans' spreads, proxing asymmetric information, decline with credit scores or hard information indicators and with indications from "group ties" (soft information from social networks). Also an increase in the risk of bank run in the traditional banking sector increases participation in the P2P markets and reduces their rates (substitution effect). We rationalize this evidence with a dynamic general equilibrium model where lenders and borrowers choose between traditional bank services (subject to the risk of bank runs and early liquidation) and P2P markets (which clear at a pooling price due to asymmetric information, but where public signals facilitate screening).

Keywords: liquidity shocks, peer-to-peer lending, pooling equilibria, signals, value of information

JEL Classification: G11, G23

Suggested Citation

Faia, Ester and Paiella, Monica, P2P Lending: Information Externalities, Social Networks and Loans' Substitution (August 2017). CEPR Discussion Paper No. DP12235, Available at SSRN: https://ssrn.com/abstract=3028601

Ester Faia (Contact Author)

Goethe University Frankfurt ( email )

Grüneburgplatz 1
Frankfurt am Main, 60323
Germany

Monica Paiella

CSEF - University of Naples Federico II ( email )

Via Amm. F. Acton, 38
80133 Naples, Caserta 80133
Italy

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
0
Abstract Views
1,169
PlumX Metrics