In this paper, we propose an extreme conditional quantile estimator. Derivation of the estimator is based on extreme quantile autoregression. A noncrossing restriction is added during estimation to avert possible quantile crossing. Consistency of the estimator is derived, and simulation results to support its validity are also presented. Using Average Root Mean Squared Error (ARMSE), we compare the performance of our estimator with the performances of two existing extreme conditional quantile estimators. Backtest results of the one-day-ahead conditional Value at Risk forecasts are also given
We consider the estimation of quantiles in the tail of the marginal distribution of nancial return s...
We use tail expectiles to estimate alternative measures to the Value at Risk (VaR) and Marginal Expe...
International audienceExpectiles and quantiles can both be defined as the solution of minimization p...
We propose a new framework exploiting realized measures of volatility to estimate and forecast extre...
<p>A quantile autoregresive model is a useful extension of classical autoregresive models as it can ...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
International audienceIn this work, we focus on some conditional extreme risk measures estimation fo...
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...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
The estimation of conditional quantiles has become an increasingly important issue in insurance and ...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
This paper considers flexible conditional (regression) measures of market risk. Value-at-Risk modeli...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
Expectiles induce a law-invariant risk measure that has recently gained popularity in actuarial and ...
We consider the estimation of quantiles in the tail of the marginal distribution of nancial return s...
We use tail expectiles to estimate alternative measures to the Value at Risk (VaR) and Marginal Expe...
International audienceExpectiles and quantiles can both be defined as the solution of minimization p...
We propose a new framework exploiting realized measures of volatility to estimate and forecast extre...
<p>A quantile autoregresive model is a useful extension of classical autoregresive models as it can ...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
International audienceIn this work, we focus on some conditional extreme risk measures estimation fo...
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...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
The estimation of conditional quantiles has become an increasingly important issue in insurance and ...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
This paper considers flexible conditional (regression) measures of market risk. Value-at-Risk modeli...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
Expectiles induce a law-invariant risk measure that has recently gained popularity in actuarial and ...
We consider the estimation of quantiles in the tail of the marginal distribution of nancial return s...
We use tail expectiles to estimate alternative measures to the Value at Risk (VaR) and Marginal Expe...
International audienceExpectiles and quantiles can both be defined as the solution of minimization p...