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Risk assessment for financial accounting: modeling probability of default

Tobias Filusch (Department of Economics, Digitization and Management, Europäische Fernhochschule Hamburg, Hamburg, Germany)

Journal of Risk Finance

ISSN: 1526-5943

Article publication date: 28 October 2020

Issue publication date: 8 June 2021

519

Abstract

Purpose

This paper aims to introduce and tests models for point-in-time probability of default (PD) term structures as required by international accounting standards. Corresponding accounting standards prescribe that expected credit losses (ECLs) be recognized for the impairment of financial instruments, for which the probability of default strongly embodies the included default risk. This paper fills the research gap resulting from a lack of models that expand upon existing risk management techniques, link PD term structures of different risk classes and are compliant with accounting standards, e.g. offering the flexibility for business cycle-related variations.

Design/methodology/approach

The author modifies the non-homogeneous continuous-time Markov chain model (NHCTMCM) by Bluhm and Overbeck (2007a, 2007b) and introduces the generalized through-the-cycle model (GTTCM), which generalizes the homogeneous Markov chain approach to a point-in-time model. As part of the overall ECL estimation, an empirical study using Standard and Poor’s (S&P) transition data compares the performance of these models using the mean squared error.

Findings

The models can reflect observed PD term structures associated with different time periods. The modified NHCTMCM performs best at the expense of higher complexity and only its cumulative PD term structures can be transferred to valid ECL-relevant unconditional PD term structures. For direct calibration to these unconditional PD term structures, the GTTCM is only slightly worse. Moreover, it requires only half of the number of parameters that its competitor does. Both models are useful additions to the implementation of accounting regulations.

Research limitations/implications

The tests are only carried out for 15-year samples within a 35-year span of available S&P transition data. Furthermore, a point-in-time forecast of the PD term structure requires a link to the business cycle, which seems difficult to find, but is in principle necessary corresponding to the accounting requirements.

Practical implications

Research findings are useful for practitioners, who apply and develop the ECL models of financial accounting.

Originality/value

The innovative models expand upon the existing methodologies for assessing financial risks, motivated by the practical requirements of new financial accounting standards.

Keywords

Acknowledgements

Results of this research paper originate from the author’s unpublished doctoral thesis “Essays on Measuring (Credit-)Risk in Banks, Financial Accounting and Auditing” at the University of Marburg 2020.

Citation

Filusch, T. (2021), "Risk assessment for financial accounting: modeling probability of default", Journal of Risk Finance, Vol. 22 No. 1, pp. 1-15. https://doi.org/10.1108/JRF-02-2020-0033

Publisher

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Emerald Publishing Limited

Copyright © 2020, Emerald Publishing Limited

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