Forecasting the risk of extreme losses is an important issue in the management of financial risk. There has been a great deal of research examining how option implied volatilities (IV) can be used to forecast asset return volatility. However, the role of IV in the context of predicting extreme risk has received relatively little attention. The potential benefit of IV in forecasting extreme risk is considered within a range of models beginning with the traditional GARCH based approach, along with a number of novel point process models. Univariate models where IV is included as an exogenous variable are considered along with a novel bivariate approach where extreme movements in IV are treated as another point process. It is found that in the ...
This article introduces a new approach for estimating Value at Risk (VaR), which is then used to sho...
A range of statistical models for the joint distribution of different financial market returns has b...
In this paper, we assess the Value at Risk (VaR) prediction accuracy and efficiency of six ARCH-type...
Forecasting the risk of extreme losses is an important issue in the management of financial risk and...
We consider which readily observable characteristics of individual stocks may be used to forecast su...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
We consider which readily observable characteristics of individual stocks (e.g., option implied vola...
The objective of this paper is to improve option risk monitoring by examining the information conten...
This paper develops a new class of dynamic models for forecasting extreme financial risk. This class...
Extreme value methods are widely used in financial applications such as risk analysis, forecasting a...
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two...
This paper proposes a new model for computing value-at-risk forecasts. The model is fully nonparamet...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Modeling and forecasting of implied volatility (IV) is important to both practitioners and academics...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...
This article introduces a new approach for estimating Value at Risk (VaR), which is then used to sho...
A range of statistical models for the joint distribution of different financial market returns has b...
In this paper, we assess the Value at Risk (VaR) prediction accuracy and efficiency of six ARCH-type...
Forecasting the risk of extreme losses is an important issue in the management of financial risk and...
We consider which readily observable characteristics of individual stocks may be used to forecast su...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
We consider which readily observable characteristics of individual stocks (e.g., option implied vola...
The objective of this paper is to improve option risk monitoring by examining the information conten...
This paper develops a new class of dynamic models for forecasting extreme financial risk. This class...
Extreme value methods are widely used in financial applications such as risk analysis, forecasting a...
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two...
This paper proposes a new model for computing value-at-risk forecasts. The model is fully nonparamet...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
Modeling and forecasting of implied volatility (IV) is important to both practitioners and academics...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...
This article introduces a new approach for estimating Value at Risk (VaR), which is then used to sho...
A range of statistical models for the joint distribution of different financial market returns has b...
In this paper, we assess the Value at Risk (VaR) prediction accuracy and efficiency of six ARCH-type...