Data vs collateral
Leonardo Gambacorta (),
Zhenhua Li and
Han Qiu ()
No 15262, CEPR Discussion Papers from C.E.P.R. Discussion Papers
The use of massive amounts of data by large technology firms (big techs) to assess firms' creditworthiness could reduce the need for collateral in solving asymmetric information problems in credit markets. Using a unique dataset of more than 2 million Chinese firms that received credit from both an important big tech firm (Ant Group) and traditional commercial banks, this paper investigates how different forms of credit correlate with local economic activity, house prices and firm characteristics. We find that big tech credit does not correlate with local business conditions and house prices when controlling for demand factors, but reacts strongly to changes in firm characteristics, such as transaction volumes and network scores used to calculate firm credit ratings. By contrast, both secured and unsecured bank credit react significantly to local house prices, which incorporate useful information on the environment in which clients operate and on their creditworthiness. This evidence implies that a greater use of big tech credit â?? granted on the basis of machine learning and big data â?? could reduce the importance of collateral in credit markets and potentially weaken the financial accelerator mechanism.
Keywords: asymmetric information; banks; Big Data; big tech; Collateral; credit markets (search for similar items in EconPapers)
JEL-codes: D22 G31 R30 (search for similar items in EconPapers)
New Economics Papers: this item is included in nep-bec, nep-big, nep-cfn, nep-fdg, nep-ict and nep-ure
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Working Paper: Data vs collateral (2020)
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