This article presents a general framework for identifying and modeling the joint-tail distribution based on multivariate extreme value theories. We argue that the multivariate approach is the most efficient and effective way to study extreme events such as systemic risk and crisis. We show, using returns on five major stock indices, that the use of traditional dependence measures could lead to inaccurate portfolio risk assessment. We explain how the framework proposed here could be exploited in a number of finance applications such as portfolio selection, risk management, Sharpe ratio targeting, hedging, option valuation, and credit risk analysis
A range of statistical models for the joint distribution of different financial market returns has b...
Abstract: The presence of tail dependencies invalidates the multivariate normality assumptions in ...
The aim of this paper is to show that measures on tail dependence can be estimated in a convenient w...
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 article presents a general framework for identifying and modeling the joint-tail distribution b...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Abstract: The presence of tail dependencies invalidates the multivariate normality assumptions in po...
This paper presents two applications of Extreme Value Theory (EVT) to financial markets: computation...
We propose a methodology based on multivariate extreme value theory, to analyze the dependence betwe...
This article reviews methods from extreme value analysis with applications to risk assessment in fin...
Cahier de Recherche du Groupe HEC Paris, n° 719In the finance literature, cross-sectional dependence...
Cahier de Recherche du Groupe HEC Paris, n° 719In the finance literature, cross-sectional dependence...
Abstract: Estimation of tail dependence between financial assets plays a vital role in various aspec...
A range of statistical models for the joint distribution of different financial market returns has b...
Abstract: The presence of tail dependencies invalidates the multivariate normality assumptions in ...
The aim of this paper is to show that measures on tail dependence can be estimated in a convenient w...
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 article presents a general framework for identifying and modeling the joint-tail distribution b...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Abstract: The presence of tail dependencies invalidates the multivariate normality assumptions in po...
This paper presents two applications of Extreme Value Theory (EVT) to financial markets: computation...
We propose a methodology based on multivariate extreme value theory, to analyze the dependence betwe...
This article reviews methods from extreme value analysis with applications to risk assessment in fin...
Cahier de Recherche du Groupe HEC Paris, n° 719In the finance literature, cross-sectional dependence...
Cahier de Recherche du Groupe HEC Paris, n° 719In the finance literature, cross-sectional dependence...
Abstract: Estimation of tail dependence between financial assets plays a vital role in various aspec...
A range of statistical models for the joint distribution of different financial market returns has b...
Abstract: The presence of tail dependencies invalidates the multivariate normality assumptions in ...
The aim of this paper is to show that measures on tail dependence can be estimated in a convenient w...