pages
166
ISBN
9781785480355

Much of the previous literature on financial contagion and systematic risks has been motivated by the finding that cross-market correlations (resp. co-exceedances) between asset returns increase significantly during crisis periods. Is this increase due to an exogenous shock common to all markets (interdependence) or due to certain types of transmission of shocks between markets (contagion)? […]

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Much of the previous literature on financial contagion and systematic risks has been motivated by the finding that cross-market correlations (resp. co-exceedances) between asset returns increase significantly during crisis periods. Is this increase due to an exogenous shock common to all markets (interdependence) or due to certain types of transmission of shocks between markets (contagion)?
Chapter 1 discusses contagion and causality in a static framework and shows that such attempts are (almost) hopeless due to identification problems. However, the chapter does not send only a negative message, since it helps in providing a more precise definition of the notion of shock.
Chapter 2 describes the standard practices for defining shocks in Structural Vector Autoregressive (SVAR) models and deriving the impulse response functions that provide the dynamic consequences of shocks on the future behavior of the series of interest. Chapter 3 shows that the identification issue discussed in Chapter 1 can be solved in a dynamic framework, even within a linear specification.
In Chapter 4 the authors explain how the static and dynamic models of Chapter 3 can be used for portfolio management, risk monitoring, and the analysis of financial stability. In Chapter 5, the authors extend to nonlinear dynamic models the notions of the common factor (dynamic frailty) and contagion. This extension is applied to the analysis of stochastic volatility models.
Finally, Chapter 6 illustrates the measurement challenge of systematic risk and contagion in finance by an application to hedge fund survival, with interpretations in terms of funding and market liquidity risks.

1. Contagion and Causality in Static Models. 2. Contagion in Structural VARMA Models. 3. Common Frailty Versus Contagion in Linear Dynamic Models. 4. Applications of Linear Dynamic Models. 5. Common Frailty and Contagion in Nonlinear Dynamic Models. 6. An Application of Nonlinear Dynamic Models: The Hedge Fund Survival.

Serge Darolles

Serge Darolles is Professor of Finance at Paris-Dauphine University, Vice-President of QuantValley, co-founder of QAMLab SAS, and member of the Quantitative Management Initiative (QMI) scientific committee. His research interests include financial econometrics, liquidity and hedge fund analysis. He has written numerous articles, which have been published in academic journals.
Patrick Duvaut is currently the Research Director of Telecom ParisTech, France. He is co-founder of QAMLab SAS, and member of the Quantitative Management Initiative (QMI) scientific committee. His fields of expertise encompass statistical signal processing, digital communications, embedded systems and QUANT finance.
Emmanuelle Jay is co-founder and President of QAMLab SAS. She has worked at Aequam Capital as co-head of R&D since April 2011 and is member of the Quantitative Management Initiative (QMI) scientific committee. Her research interests include SP for finance, quantitative and statistical finance, and hedge fund analysis.