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
The thesis evaluates several hundred one-day-ahead VaR forecasting models in the time period between...
We investigate the performance of the GARCH modelling strategy with symmetric and asymmetric power e...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value a...
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...
A resampling method based on the bootstrap and a bias-correction step is developed for improving the...
This paper proposes a robust semiparametric bootstrap method to estimate predictive distributions of...
We evaluate the predictive performance of a variety of value-at-risk (VaR) models for a portfolio co...
In this paper the value at risk (VaR) forecasts are compared using three different GARCH models; ARC...
The paper presents methods of estimating Value-at-Risk (VaR) thresholds utilising two calibrated mod...
Abstract Recent financial crises have demonstrated the importance of accurately measuring financial ...
The paper evaluates several hundred one-day-ahead VaR forecasting models in the time period between ...
The paper describes alternative methods of estimating Value-at-Risk (VaR) thresholds based on two ca...
This paper studies seven GARCH models, including RiskMetrics and two long memory GARCH models, in Va...
In the financial industry, it has been increasingly popular to measure risk. One of the most common ...
The thesis evaluates several hundred one-day-ahead VaR forecasting models in the time period between...
We investigate the performance of the GARCH modelling strategy with symmetric and asymmetric power e...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value a...
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...
A resampling method based on the bootstrap and a bias-correction step is developed for improving the...
This paper proposes a robust semiparametric bootstrap method to estimate predictive distributions of...
We evaluate the predictive performance of a variety of value-at-risk (VaR) models for a portfolio co...
In this paper the value at risk (VaR) forecasts are compared using three different GARCH models; ARC...
The paper presents methods of estimating Value-at-Risk (VaR) thresholds utilising two calibrated mod...
Abstract Recent financial crises have demonstrated the importance of accurately measuring financial ...
The paper evaluates several hundred one-day-ahead VaR forecasting models in the time period between ...
The paper describes alternative methods of estimating Value-at-Risk (VaR) thresholds based on two ca...
This paper studies seven GARCH models, including RiskMetrics and two long memory GARCH models, in Va...
In the financial industry, it has been increasingly popular to measure risk. One of the most common ...
The thesis evaluates several hundred one-day-ahead VaR forecasting models in the time period between...
We investigate the performance of the GARCH modelling strategy with symmetric and asymmetric power e...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value a...