Can we trust machine learning to predict the credit risk of small businesses?

Alessandro Bitetto, Paola Cerchiello, Stefano Filomeni, Alessandra Tanda, Barbara Tarantino

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)
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Abstract

With the emergence of Fintech lending, small firms can benefit from new channels of financing. In this setting, the creditworthiness and the decision to extend credit are often based on standardized and advanced machine-learning techniques that employ limited information. This paper investigates the ability of machine learning to correctly predict credit risk ratings for small firms. By employing a unique proprietary dataset on invoice lending activities, this paper shows that machine learning techniques overperform traditional techniques, such as probit, when the set of information available to lenders is limited. This paper contributes to the understanding of the reliability of advanced credit scoring techniques in the lending process to small businesses, making it a special interesting case for the Fintech environment.
Original languageEnglish
Pages (from-to)925-954
Number of pages30
JournalReview of Quantitative Finance and Accounting
Volume63
Early online date6 Jun 2024
DOIs
Publication statusPublished - Oct 2024

Bibliographical note

We are grateful to the Editor Cheng-Few Lee and to two anonymous referees for their valuable insights and suggestions.

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