Zoekopties
Home Media Explainers Onderzoek & publicaties Statistieken Monetair beleid De euro Betalingsverkeer & markten Werken bij de ECB
Suggesties
Sorteren op
Niet beschikbaar in het Nederlands

Özgür Şimşek

22 November 2021
WORKING PAPER SERIES - No. 2614
Details
Abstract
We develop early warning models for financial crisis prediction by applying machine learning techniques to macrofinancial data for 17 countries over 1870–2016. Most nonlin-ear machine learning models outperform logistic regression in out-of-sample predictions and forecasting. We identify economic drivers of our machine learning models using a novel framework based on Shapley values, uncovering nonlinear relationships between the predic-tors and crisis risk. Throughout, the most important predictors are credit growth and the slope of the yield curve, both domestically and globally. A flat or inverted yield curve is of most concern when nominal interest rates are low and credit growth is high.
JEL Code
C40 : Mathematical and Quantitative Methods→Econometric and Statistical Methods: Special Topics→General
C53 : Mathematical and Quantitative Methods→Econometric Modeling→Forecasting and Prediction Methods, Simulation Methods
E44 : Macroeconomics and Monetary Economics→Money and Interest Rates→Financial Markets and the Macroeconomy
F30 : International Economics→International Finance→General
G01 : Financial Economics→General→Financial Crises

Onze website maakt gebruik van cookies

We gebruiken functionele cookies om voorkeuren van gebruikers op te slaan, analytische cookies om de werking van de website te verbeteren en cookies van derden die zijn ingesteld door in de website geïntegreerde externe diensten.

U kunt deze cookies accepteren of weigeren. Voor meer informatie of voor het herzien van uw voorkeuren over cookies en serverlogs die we gebruiken, kunt u hier terecht:

Onze privacyverklaring lezen

Nadere informatie over ons gebruik van cookies