A resampling method based on the bootstrap and a bias-correction step is developed for improving the Value-at-Risk (VaR) forecasting ability of the normal-GARCH model. Compared to the use of more sophisticated GARCH models, the new method is fast, easy to implement, numerically reliable, and, except for having to choose a window length L for the bias-correction step, fully data driven. The results for several different financial asset returns over a long out-of-sample forecasting period, as well as use of simulated data, strongly support use of the new method, and the performance is not sensitive to the choice of L.Bootstrap, GARCH, Value-at-Risk
In this paper, we propose a model for forecasting Value-at-Risk (VaR) using a Bayesian Markov-switch...
In this paper, we assess the Value at Risk (VaR) prediction accuracy and efficiency of six ARCH-type...
Various GARCH models are applied to daily returns of more than 1200 constituents of major stock indi...
A resampling method based on the bootstrap and a bias-correction step is developed for improving the...
A resampling method based on the bootstrap and a bias-correction step is developed for improving the...
A resampling method based on the bootstrap and a bias-correction step is developed for im-proving th...
We evaluate the predictive performance of a variety of value-at-risk (VaR) models for a portfolio co...
This paper proposes a robust semiparametric bootstrap method to estimate predictive distributions of...
The idea of statistical learning can be applied in financial risk management. In recent years, value...
We propose a new bootstrap resampling scheme to obtain prediction densities of levels and volatilit...
A new bootstrap procedure to obtain prediction densities of returns and volatilities of GARCH proces...
We evaluate the performance of an extensive family of ARCH models in modelling daily Valueat-Risk (V...
Value-at-Risk (VaR) forecasting in the context of Monte Carlo simulations is evaluated. A range of p...
The paper addresses an inefficiency of the traditional approach in modeling the tail risk, particula...
In this paper, we present a novel approach for forecasting Value-at-Risk (VaR) by combining a Bayesi...
In this paper, we propose a model for forecasting Value-at-Risk (VaR) using a Bayesian Markov-switch...
In this paper, we assess the Value at Risk (VaR) prediction accuracy and efficiency of six ARCH-type...
Various GARCH models are applied to daily returns of more than 1200 constituents of major stock indi...
A resampling method based on the bootstrap and a bias-correction step is developed for improving the...
A resampling method based on the bootstrap and a bias-correction step is developed for improving the...
A resampling method based on the bootstrap and a bias-correction step is developed for im-proving th...
We evaluate the predictive performance of a variety of value-at-risk (VaR) models for a portfolio co...
This paper proposes a robust semiparametric bootstrap method to estimate predictive distributions of...
The idea of statistical learning can be applied in financial risk management. In recent years, value...
We propose a new bootstrap resampling scheme to obtain prediction densities of levels and volatilit...
A new bootstrap procedure to obtain prediction densities of returns and volatilities of GARCH proces...
We evaluate the performance of an extensive family of ARCH models in modelling daily Valueat-Risk (V...
Value-at-Risk (VaR) forecasting in the context of Monte Carlo simulations is evaluated. A range of p...
The paper addresses an inefficiency of the traditional approach in modeling the tail risk, particula...
In this paper, we present a novel approach for forecasting Value-at-Risk (VaR) by combining a Bayesi...
In this paper, we propose a model for forecasting Value-at-Risk (VaR) using a Bayesian Markov-switch...
In this paper, we assess the Value at Risk (VaR) prediction accuracy and efficiency of six ARCH-type...
Various GARCH models are applied to daily returns of more than 1200 constituents of major stock indi...