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Identifying Financial Crises Using Machine Learning on Textual Data.

Authors :
Chen, Mary
DeHaven, Matthew
Kitschelt, Isabel
Seung Jung Lee
Sicilian, Martin
Source :
Working Papers -- U.S. Federal Reserve Board's International Finance Discussion Papers; Mar2023, Issue 1372-1374, preceding p1-38, 39p
Publication Year :
2023

Abstract

We use machine learning techniques on textual data to identify financial crises. The onset of a crisis and its duration have implications for real economic activity, and as such can be valuable inputs into macroprudential, monetary, and fiscal policy. The academic literature and the policy realm rely mostly on expert judgment to determine crises, often with a lag. Consequently, crisis durations and the buildup phases of vulnerabilities are usually determined only with the benefit of hindsight. Although we can identify and forecast a portion of crises worldwide to various degrees with traditional econometric techniques and using readily available market data, we find that textual data helps in reducing false positives and false negatives in out-of-sample testing of such models, especially when the crises are considered more severe. Building a framework that is consistent across countries and in real time can benefit policymakers around the world, especially when international coordination is required across different government policies. [ABSTRACT FROM AUTHOR]

Details

Language :
English
Issue :
1372-1374
Database :
Complementary Index
Journal :
Working Papers -- U.S. Federal Reserve Board's International Finance Discussion Papers
Publication Type :
Report
Accession number :
164104454
Full Text :
https://doi.org/10.17016/IFDP.2023.1374