This paper studies the performance of nonparametric quantile regression as a tool to predict Value at Risk (VaR). The approach is flexible as it requires no assumptions on the form of return distributions. A monotonized double kernel local linear estimator is applied to estimate moderate (1%) conditional quantiles of index return distributions. For extreme (0.1%) quantiles, where particularly few data points are available, we propose to combine nonparametric quantile regression with extreme value theory. The out-of-sample forecasting performance of our methods turns out to be clearly superior to different specifications of the Conditionally Autoregressive VaR (CAViaR) models
The catastrophic failures of risk management systems in 2008 bring to the forefront the need for acc...
In this paper, we propose an extreme conditional quantile estimator. Derivation of the estimator is ...
Financial risk control has always been challenging and becomes now an even harder problem as joint e...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
Risk management has attracted a great deal of attentions, and particularly, Value at Risk (VaR) has ...
The estimation of conditional quantiles has become an increasingly important issue in insurance and ...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance f...
We investigate the predictive performance of various classes of Value-at-Risk (VaR) models in severa...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
We investigate the predictive performance of various classes of value-at-risk (VaR) models in severa...
This paper investigates a nonparametric approach for estimating conditional quantiles of time serie...
This paper conducts a comparative evaluation of the predictive performance of various Value at Risk ...
The catastrophic failures of risk management systems in 2008 bring to the forefront the need for acc...
In this paper, we propose an extreme conditional quantile estimator. Derivation of the estimator is ...
Financial risk control has always been challenging and becomes now an even harder problem as joint e...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
Risk management has attracted a great deal of attentions, and particularly, Value at Risk (VaR) has ...
The estimation of conditional quantiles has become an increasingly important issue in insurance and ...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance f...
We investigate the predictive performance of various classes of Value-at-Risk (VaR) models in severa...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
We investigate the predictive performance of various classes of value-at-risk (VaR) models in severa...
This paper investigates a nonparametric approach for estimating conditional quantiles of time serie...
This paper conducts a comparative evaluation of the predictive performance of various Value at Risk ...
The catastrophic failures of risk management systems in 2008 bring to the forefront the need for acc...
In this paper, we propose an extreme conditional quantile estimator. Derivation of the estimator is ...
Financial risk control has always been challenging and becomes now an even harder problem as joint e...