Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities
Systemic risk, in a complex system with several interrelated variables, such as a financial market, is quantifiable from the multivariate probability distribution describing the reciprocal influence between the system’s variables. The effect of stress on the system is reflected by the change in such...
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doaj-b1b52205e2dd46c18dc2f7bf4f3f68772021-05-31T23:33:40ZengMDPI AGJournal of Risk and Financial Management1911-80661911-80742021-05-011421321310.3390/jrfm14050213Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate ProbabilitiesTomaso Aste0Department of Computer Science, University College London, Gower Street, London WC1E 6EA, UKSystemic risk, in a complex system with several interrelated variables, such as a financial market, is quantifiable from the multivariate probability distribution describing the reciprocal influence between the system’s variables. The effect of stress on the system is reflected by the change in such a multivariate probability distribution, conditioned to some of the variables being at a given stress’ amplitude. Therefore, the knowledge of the conditional probability distribution function can provide a full quantification of risk and stress propagation in the system. However, multivariate probabilities are hard to estimate from observations. In this paper, I investigate the vast family of multivariate elliptical distributions, discussing their estimation from data and proposing novel measures for stress impact and systemic risk in systems with many interrelated variables. Specific examples are described for the multivariate Student-t and the multivariate normal distributions applied to financial stress testing. An example of the US equity market illustrates the practical potentials of this approach.https://www.mdpi.com/1911-8074/14/5/213stress testingsystemic riskelliptical conditional probability |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Tomaso Aste |
spellingShingle |
Tomaso Aste Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities Journal of Risk and Financial Management stress testing systemic risk elliptical conditional probability |
author_facet |
Tomaso Aste |
author_sort |
Tomaso Aste |
title |
Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities |
title_short |
Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities |
title_full |
Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities |
title_fullStr |
Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities |
title_full_unstemmed |
Stress Testing and Systemic Risk Measures Using Elliptical Conditional Multivariate Probabilities |
title_sort |
stress testing and systemic risk measures using elliptical conditional multivariate probabilities |
publisher |
MDPI AG |
series |
Journal of Risk and Financial Management |
issn |
1911-8066 1911-8074 |
publishDate |
2021-05-01 |
description |
Systemic risk, in a complex system with several interrelated variables, such as a financial market, is quantifiable from the multivariate probability distribution describing the reciprocal influence between the system’s variables. The effect of stress on the system is reflected by the change in such a multivariate probability distribution, conditioned to some of the variables being at a given stress’ amplitude. Therefore, the knowledge of the conditional probability distribution function can provide a full quantification of risk and stress propagation in the system. However, multivariate probabilities are hard to estimate from observations. In this paper, I investigate the vast family of multivariate elliptical distributions, discussing their estimation from data and proposing novel measures for stress impact and systemic risk in systems with many interrelated variables. Specific examples are described for the multivariate Student-t and the multivariate normal distributions applied to financial stress testing. An example of the US equity market illustrates the practical potentials of this approach. |
topic |
stress testing systemic risk elliptical conditional probability |
url |
https://www.mdpi.com/1911-8074/14/5/213 |
work_keys_str_mv |
AT tomasoaste stresstestingandsystemicriskmeasuresusingellipticalconditionalmultivariateprobabilities |
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