Rethinking SME default prediction: a systematic literature review and future perspectives

Ciampi, Francesco, Giannozzi, Alessandro, Marzi, Giacomo and Altman, Edward I. (2021) Rethinking SME default prediction: a systematic literature review and future perspectives. Scientometrics, 126 . pp. 2141-2188. ISSN 0138-9130

Full content URL: https://dx.doi.org/10.1007/s11192-020-03856-0

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Abstract

Over the last dozen years, the topic of small and medium enterprise (SME) default prediction has developed into a relevant research domain that has grown for important reasons exponentially across multiple disciplines, including finance, management, accounting, and statistics. Motivated by the enormous toll on SMEs caused by the 2007-2009 global financial crisis as well as the recent COVID-19 crisis and the consequent need to develop new SME default predictors, this paper provides a systematic literature review, based on a statistical, bibliometric analysis, of over 100 peer-reviewed articles published on SME default prediction modelling over a 34-year period, 1986 to 2019. We identified, analysed and reviewed five streams of research and suggest a set of future research avenues to help scholars and practitioners address the new challenges and emerging issues in a changing economic environment. The research agenda proposes some new innovative approaches to capture and exploit new data sources using modern analytical techniques, like artificial intelligence, machine learning, and macro-data inputs, with the aim of providing enhanced predictive results.

Keywords:SMEs, Probability of default, Default prediction, Bibliometric, VOSviewer, Systematic review
Subjects:N Business and Administrative studies > N300 Finance
Divisions:Lincoln International Business School
ID Code:43564
Deposited On:01 Feb 2021 10:27

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