AbstractIn this paper, we investigate extreme events in high frequency, multivariate FX returns within a purposely built framework. We generalize univariate tests and concepts to multidimensional settings and employ these novel techniques for parametric and nonparametric analysis. In particular, we investigate and quantify the co-dependence of cross-sectional and intertemporal extreme events. We find evidence of the cubic law of extreme returns, their increasing and asymmetric dependence and of the scaling property of extreme risk in joint symmetric tails
In practice, multivariate dependencies between extreme risks are often only assessed in a pairwise w...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Properties of risk measures for extreme risks have become an important topic of research. In the pre...
AbstractIn this paper, we investigate extreme events in high frequency, multivariate FX returns with...
In this paper, we investigate extreme events in high frequency, multivariate FX returns within a pur...
We present a generalized notion of extreme multivariate dependence between two random vectors which ...
This thesis studies dependence of extreme events in financial markets. Statistical tests, detecting ...
We investigate extreme dependence in a multivariate setting with special emphasis on financial appli...
Extreme value modeling has been attracting the attention of researchers in diverse areas such as th...
Cahier de Recherche du Groupe HEC Paris, n° 719In the finance literature, cross-sectional dependence...
Extreme value methods have been successfully applied in various disciplines with the purpose of est...
This article presents a general framework for identifying and modeling the joint-tail distribution b...
This article presents a general framework for identifying and modeling the joint-tail distribution b...
This paper proposes a methodology to provide risk measures for portfolios during extreme events. Th...
Stylized facts for univariate high-frequency data in finance are well known. They include scaling be...
In practice, multivariate dependencies between extreme risks are often only assessed in a pairwise w...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Properties of risk measures for extreme risks have become an important topic of research. In the pre...
AbstractIn this paper, we investigate extreme events in high frequency, multivariate FX returns with...
In this paper, we investigate extreme events in high frequency, multivariate FX returns within a pur...
We present a generalized notion of extreme multivariate dependence between two random vectors which ...
This thesis studies dependence of extreme events in financial markets. Statistical tests, detecting ...
We investigate extreme dependence in a multivariate setting with special emphasis on financial appli...
Extreme value modeling has been attracting the attention of researchers in diverse areas such as th...
Cahier de Recherche du Groupe HEC Paris, n° 719In the finance literature, cross-sectional dependence...
Extreme value methods have been successfully applied in various disciplines with the purpose of est...
This article presents a general framework for identifying and modeling the joint-tail distribution b...
This article presents a general framework for identifying and modeling the joint-tail distribution b...
This paper proposes a methodology to provide risk measures for portfolios during extreme events. Th...
Stylized facts for univariate high-frequency data in finance are well known. They include scaling be...
In practice, multivariate dependencies between extreme risks are often only assessed in a pairwise w...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Properties of risk measures for extreme risks have become an important topic of research. In the pre...