Einzelansicht
Mi., 11. Feb. 2026 Lehrstuhl Finance
Neue A-Publikation im Journal of Financial Stability
Der Beitrag "Predictive multiplicity, procedural multiplicity, and heterogeneous machine learning ensembles in recovery rate forecasting" (von M. Hibbeln, R. Kopp und N. Urban) wurde vom Journal of Financial Stability (VHB Rating 2024: A) zur Veröffentlichung angenommen. Den Beitrag können Sie hier einsehen.
Abstract:
Machine learning (ML) could strengthen banks’ resilience through improved credit risk screening and ultimately benefit financial stability. Yet, ML adoption in banking remains limited, with simpler linear models still predominating. We argue that the emergence of highly flexible ML models has created a new challenge for forecasting tasks: ‘model multiplicity’—where equally accurate ML models at the aggregate level produce divergent individual-level predictions (‘predictive multiplicity’) or differ in their decision surfaces (‘procedural multiplicity’). These issues raise fundamental questions: Why should an individual or firm be subject to an adverse credit risk model outcome when there is an equally accurate model that treats them more favorably? Using the world’s largest loss database of corporate defaults, we examine these two phenomena in recovery rate (RR) modeling and propose heterogeneous ML ensembles as a natural solution. By combining predictions and decision surfaces from multiple well-performing ML models, ensembles mitigate risks associated with predictive multiplicity by ensuring that borrowers are not subject to the fluctuations of a single model, and reduce procedural multiplicity by providing a robust measure of features that ultimately improve out-of-sample RR predictions. By addressing the ‘multiplicity of good models’ problem, our study emphasizes the importance of model stability and provides new insights for the future development of ML models.
Aktuelles:
- Seminar Finance SS 202617.12.25
- Stellenausschreibung: Postdoc (m/w/d) am Lehrstuhl für Finance gesucht22.02.23
- Seminar Finance SS 202322.12.22
- Informationen zur Lehrveranstaltung "Investition und Finanzierung" im WS 2022/2306.10.22
- Quantitatives Risikomanagement - Gastvortrag von Herrn Gerwin Scharmann am 27.06.20.06.22
- Seminar Finance WS 2022/202301.06.22
MSM Aktuelles:
Workshop bei Horváth für Studierende des Kurses "Controlling im digitalen Zeitalter"19.05.26
ERASMUS Restplätze für das SoSe 2715.05.26- OR-Vorlesung online am Dienstag, 19.05.2615.05.26
- Klausuranmeldephase für das Sommersemester 202613.05.26
Einladung zum Vortrag der DZ Bank an der MSM: 11.05.2026, 12:00 Uhr10.05.26- Exkursion zu Primark08.05.26
- Neue Masterlinie Management & Marketing ab WS 26/2707.05.26
jobMESSE 202630.04.26- Entfall der Veranstaltungen „Selbstführung, Mitarbeiterführung und Teamführung“28.04.26
- Entfall der Veranstaltungen „Grundlagen des Personalmanagements“28.04.26
