CoRisk: Credit Risk Contagion with Correlation Network Models

We propose a novel credit risk measurement model for Corporate Default Swap (CDS) spreads that combines vector autoregressive regression with correlation networks. We focus on the sovereign CDS spreads of a collection of countries that can be regarded as idiosyncratic measures of credit risk. We mod...

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Main Authors: Paolo Giudici, Laura Parisi
Format: Article
Language:English
Published: MDPI AG 2018-09-01
Series:Risks
Subjects:
Online Access:http://www.mdpi.com/2227-9091/6/3/95
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spelling doaj-644d4a20c9304482bd74aa5d8488b3022020-11-25T00:40:39ZengMDPI AGRisks2227-90912018-09-01639510.3390/risks6030095risks6030095CoRisk: Credit Risk Contagion with Correlation Network ModelsPaolo Giudici0Laura Parisi1Department of Economics and Management, University of Pavia, 27100 Pavia, ItalyEuropean Central Bank, 60640 Frankfurt am Main GermanyWe propose a novel credit risk measurement model for Corporate Default Swap (CDS) spreads that combines vector autoregressive regression with correlation networks. We focus on the sovereign CDS spreads of a collection of countries that can be regarded as idiosyncratic measures of credit risk. We model CDS spreads by means of a structural vector autoregressive model, composed by a time dependent country specific component, and by a contemporaneous component that describes contagion effects among countries. To disentangle the two components, we employ correlation networks, derived from the correlation matrix between the reduced form residuals. The proposed model is applied to ten countries that are representative of the recent financial crisis: top borrowing/lending countries, and peripheral European countries. The empirical findings show that the contagion variable derived in this study can be considered as a network centrality measure. From an applied viewpoint, the results indicate that, in the last 10 years, contagion has induced a “clustering effect” between core and peripheral countries, with the two groups further diverging through, and because of, contagion propagation, thus creating a sort of diabolic loop extremely difficult to be reversed. Finally, the outcomes of the analysis confirm that core countries are importers of risk, as contagion increases their CDS spread, whereas peripheral countries are exporters of risk. Greece is an unfortunate exception, as its spreads seem to increase for both idiosyncratic factors and contagion effects.http://www.mdpi.com/2227-9091/6/3/95corporate default swap spreadscorrelation networkscontagionvector autoregressive regression
collection DOAJ
language English
format Article
sources DOAJ
author Paolo Giudici
Laura Parisi
spellingShingle Paolo Giudici
Laura Parisi
CoRisk: Credit Risk Contagion with Correlation Network Models
Risks
corporate default swap spreads
correlation networks
contagion
vector autoregressive regression
author_facet Paolo Giudici
Laura Parisi
author_sort Paolo Giudici
title CoRisk: Credit Risk Contagion with Correlation Network Models
title_short CoRisk: Credit Risk Contagion with Correlation Network Models
title_full CoRisk: Credit Risk Contagion with Correlation Network Models
title_fullStr CoRisk: Credit Risk Contagion with Correlation Network Models
title_full_unstemmed CoRisk: Credit Risk Contagion with Correlation Network Models
title_sort corisk: credit risk contagion with correlation network models
publisher MDPI AG
series Risks
issn 2227-9091
publishDate 2018-09-01
description We propose a novel credit risk measurement model for Corporate Default Swap (CDS) spreads that combines vector autoregressive regression with correlation networks. We focus on the sovereign CDS spreads of a collection of countries that can be regarded as idiosyncratic measures of credit risk. We model CDS spreads by means of a structural vector autoregressive model, composed by a time dependent country specific component, and by a contemporaneous component that describes contagion effects among countries. To disentangle the two components, we employ correlation networks, derived from the correlation matrix between the reduced form residuals. The proposed model is applied to ten countries that are representative of the recent financial crisis: top borrowing/lending countries, and peripheral European countries. The empirical findings show that the contagion variable derived in this study can be considered as a network centrality measure. From an applied viewpoint, the results indicate that, in the last 10 years, contagion has induced a “clustering effect” between core and peripheral countries, with the two groups further diverging through, and because of, contagion propagation, thus creating a sort of diabolic loop extremely difficult to be reversed. Finally, the outcomes of the analysis confirm that core countries are importers of risk, as contagion increases their CDS spread, whereas peripheral countries are exporters of risk. Greece is an unfortunate exception, as its spreads seem to increase for both idiosyncratic factors and contagion effects.
topic corporate default swap spreads
correlation networks
contagion
vector autoregressive regression
url http://www.mdpi.com/2227-9091/6/3/95
work_keys_str_mv AT paologiudici coriskcreditriskcontagionwithcorrelationnetworkmodels
AT lauraparisi coriskcreditriskcontagionwithcorrelationnetworkmodels
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