Surrogate Data Models: Interpreting Large-scale Machine Learning Crisis Prediction Models

Surrogate Data Models: Interpreting Large-scale Machine Learning Crisis Prediction Models
READ MORE...
Volume/Issue: Volume 2023 Issue 041
Publication date: February 2023
ISBN: 9798400234828
$20.00
Add to Cart by clicking price of the language and format you'd like to purchase
Available Languages and Formats
English
Prices in red indicate formats that are not yet available but are forthcoming.
Topics covered in this book

This title contains information about the following subjects. Click on a subject if you would like to see other titles with the same subjects.

Banks and Banking , Economics- Macroeconomics , Economics / General , Crisis prediction , machine learning , surrogates , explainable models , IMF ML crisis , ML crisis prediction , Annex I , IMF ML , surrogate data models , model interpretability , Early warning systems , Yield curve , Deposit rates , Global

Summary

Machine learning models are becoming increasingly important in the prediction of economic crises. The models, however, use datasets comprising a large number of predictors (features) which impairs model interpretability and their ability to provide adequate guidance in the design of crisis prevention and mitigation policies. This paper introduces surrogate data models as dimensionality reduction tools in large-scale crisis prediction models. The appropriateness of this approach is assessed by their application to large-scale crisis prediction models developed at the IMF. The results are consistent with economic intuition and validate the use of surrogates as interpretability tools.