A proximity based macro stress testing framework

In this a paper a non-linear macro stress testing methodology with focus on early warning is developed. The methodology builds on a variant of Random Forests and its proximity measures. It is embedded in a framework, in which naturally defined contagion and feedback effects transfer the impact of st...

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Main Author: Waelchli Boris
Format: Article
Language:English
Published: De Gruyter 2016-11-01
Series:Dependence Modeling
Subjects:
Online Access:https://doi.org/10.1515/demo-2016-0015
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spelling doaj-79a96602bc964ee8826768e32834b0842021-10-02T17:48:35ZengDe GruyterDependence Modeling2300-22982016-11-014110.1515/demo-2016-0015demo-2016-0015A proximity based macro stress testing frameworkWaelchli Boris0Department of Banking and Finance, University of Zurich,Plattenstrasse 14, CH-8032 Zuerich, SwitzerlandIn this a paper a non-linear macro stress testing methodology with focus on early warning is developed. The methodology builds on a variant of Random Forests and its proximity measures. It is embedded in a framework, in which naturally defined contagion and feedback effects transfer the impact of stressing a relatively small part of the observations on the whole dataset, allowing to estimate a stressed future state. It will be shown that contagion can be directly derived from the proximities while iterating the proximity based contagion leads to naturally defined feedback effects. Since the methodology is Random Forests based the framework can be estimated on large numbers of risk indicators up to big data dimensions, fostering the stability of the results while reducing inaccuracies in estimated stress scenarios by only stressing a small part of the observations. This procedure allows accurate forecasting of events under stress and the emergence of a potential macro crisis. The framework also estimates a set of the most influential economic indicators leading to the potential crisis, which can then be used as indications of remediation or prevention.https://doi.org/10.1515/demo-2016-0015random forests machine learning stress testing early warning indicators big data
collection DOAJ
language English
format Article
sources DOAJ
author Waelchli Boris
spellingShingle Waelchli Boris
A proximity based macro stress testing framework
Dependence Modeling
random forests
machine learning
stress testing
early warning indicators
big data
author_facet Waelchli Boris
author_sort Waelchli Boris
title A proximity based macro stress testing framework
title_short A proximity based macro stress testing framework
title_full A proximity based macro stress testing framework
title_fullStr A proximity based macro stress testing framework
title_full_unstemmed A proximity based macro stress testing framework
title_sort proximity based macro stress testing framework
publisher De Gruyter
series Dependence Modeling
issn 2300-2298
publishDate 2016-11-01
description In this a paper a non-linear macro stress testing methodology with focus on early warning is developed. The methodology builds on a variant of Random Forests and its proximity measures. It is embedded in a framework, in which naturally defined contagion and feedback effects transfer the impact of stressing a relatively small part of the observations on the whole dataset, allowing to estimate a stressed future state. It will be shown that contagion can be directly derived from the proximities while iterating the proximity based contagion leads to naturally defined feedback effects. Since the methodology is Random Forests based the framework can be estimated on large numbers of risk indicators up to big data dimensions, fostering the stability of the results while reducing inaccuracies in estimated stress scenarios by only stressing a small part of the observations. This procedure allows accurate forecasting of events under stress and the emergence of a potential macro crisis. The framework also estimates a set of the most influential economic indicators leading to the potential crisis, which can then be used as indications of remediation or prevention.
topic random forests
machine learning
stress testing
early warning indicators
big data
url https://doi.org/10.1515/demo-2016-0015
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