We propose a new framework exploiting realized measures of volatility to estimate and forecast extreme quantiles. Our realized extreme quantile (REQ) combines quantile regression with extreme value theory and uses a measurement equation that relates the realized measure to the latent conditional quantile. Model estimation is performed by quasi maximum likelihood, and a simulation experiment validates this estimator in finite samples. An extensive empirical analysis shows that high-frequency measures are particularly informative of the dynamic quantiles. Finally, an out-of-sample forecast analysis of quantile-based risk measures confirms the merit of the REQ
International audienceQuantiles are basic tools in extreme-value theory in general, and in actuarial...
Recurrent “black swans” financial events are a major concern for both investors and regulators becau...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
We propose a new framework exploiting realized measures of volatility to estimate and forecast extre...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
In this paper, we propose an extreme conditional quantile estimator. Derivation of the estimator is ...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
AbstractMethods for estimating extreme loads are used in design as well as risk assessment. Regressi...
<p>A quantile autoregresive model is a useful extension of classical autoregresive models as it can ...
We consider the estimation of quantiles in the tail of the marginal distribution of nancial return s...
In this paper, we provide a novel Bayesian solution to forecasting extreme quantile thresholds that ...
International audienceQuantiles are basic tools in extreme-value theory in general, and in actuarial...
Recurrent “black swans” financial events are a major concern for both investors and regulators becau...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
We propose a new framework exploiting realized measures of volatility to estimate and forecast extre...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
In this paper, we propose an extreme conditional quantile estimator. Derivation of the estimator is ...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
AbstractMethods for estimating extreme loads are used in design as well as risk assessment. Regressi...
<p>A quantile autoregresive model is a useful extension of classical autoregresive models as it can ...
We consider the estimation of quantiles in the tail of the marginal distribution of nancial return s...
In this paper, we provide a novel Bayesian solution to forecasting extreme quantile thresholds that ...
International audienceQuantiles are basic tools in extreme-value theory in general, and in actuarial...
Recurrent “black swans” financial events are a major concern for both investors and regulators becau...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...