In this paper, a calibrated scenario generation model for multivariate risk factors with heavy-tailed distributions is developed. This model includes the standard and classical model of scenario generation developed by J. P. Morgan as a special case. A rotation method is introduced to preserve the correlation information between risk factors, and a mixture of normal distributions is used to model and fit each marginal heavy-tailed distribution. Based on the scenario generation, a non-parametric method is applied to estimate the extreme value-at-risk and value-at-risk confidence interval of a portfolio with heavy-tailed distribution
Expectiles define the only law-invariant, coherent and elicitable risk measure apart from the expect...
In the present study, a new class of heavy tailed distributions using the T-X family approach is int...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
For purposes of Value-at-Risk estimation, we consider several multivariate families of heavy-tail...
Abstract. Since the work of Mandelbrot in the 1960’s there has accumu-lated a great deal of empirica...
Expectiles induce a law-invariant, coherent and elicitable risk measure that has received substantia...
The objective of this paper is to improve option risk monitoring by examining the information conten...
Tail risk measures such as the conditional value-at-risk are useful in the context of portfolio sele...
This paper presents an analysis of diversification and portfolio value at risk for heavy-tailed depe...
Typically, in constructing a model for a random variable, one utilizes available samples to construc...
AbstractThis paper proposes a novel nonlinear model for calculating Value-at-Risk (VaR) when the mar...
Measuring and managing credit risk constitute one of the most important processes within bank risk m...
Expectiles define the only law-invariant, coherent and elicitable risk measure apart from the expect...
This paper presents an analysis of diversification and portfolio value at risk for heavy-tailed depe...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Expectiles define the only law-invariant, coherent and elicitable risk measure apart from the expect...
In the present study, a new class of heavy tailed distributions using the T-X family approach is int...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
For purposes of Value-at-Risk estimation, we consider several multivariate families of heavy-tail...
Abstract. Since the work of Mandelbrot in the 1960’s there has accumu-lated a great deal of empirica...
Expectiles induce a law-invariant, coherent and elicitable risk measure that has received substantia...
The objective of this paper is to improve option risk monitoring by examining the information conten...
Tail risk measures such as the conditional value-at-risk are useful in the context of portfolio sele...
This paper presents an analysis of diversification and portfolio value at risk for heavy-tailed depe...
Typically, in constructing a model for a random variable, one utilizes available samples to construc...
AbstractThis paper proposes a novel nonlinear model for calculating Value-at-Risk (VaR) when the mar...
Measuring and managing credit risk constitute one of the most important processes within bank risk m...
Expectiles define the only law-invariant, coherent and elicitable risk measure apart from the expect...
This paper presents an analysis of diversification and portfolio value at risk for heavy-tailed depe...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Expectiles define the only law-invariant, coherent and elicitable risk measure apart from the expect...
In the present study, a new class of heavy tailed distributions using the T-X family approach is int...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...