This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two-step approach where returns are first pre-whitened with a high-frequency based volatility model, and thencan EVT-based-model is fitted to the tails of the standardized residuals. This realized EVT approach is compared to the conditional EVT of McNeil and Frey (2000). We assess both approaches'ability to filter the dependence in the extremes and to produce stable out-of-sample VaR and ES estimates for one-day and ten-day time horizons. The main finding is that GARCH-type models perform well in filtering the dependence, while the realized EVT approach seems preferable in forecasting, especially at longer time horizons
One of the key components of financial risk management is risk measurement. This typically requires ...
Recent contributions to the financial econometrics literature exploit high-frequency (HF) data to im...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two...
Extreme value methods have been successfully applied in various disciplines with the purpose of est...
We propose a method for estimating VaR and related risk measures describing the tail of the conditio...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
Although stock prices fluctuate, the variations are relatively small and are frequently assumed to b...
This paper presents two applications of Extreme Value Theory (EVT) to financial markets: computation...
Background - Extreme value theory (EVT) is one possible approach to identify and manage the extreme ...
textabstractA scientific way of looking beyond the worst-case return is to employ statistical extrem...
We propose a new framework exploiting realized measures of volatility to estimate and forecast extre...
: Extreme Value Theory (EVT) originated, in 1928, in the work of Fisher and Tippett describing ...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
One of the key components of financial risk management is risk measurement. This typically requires ...
Recent contributions to the financial econometrics literature exploit high-frequency (HF) data to im...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two...
Extreme value methods have been successfully applied in various disciplines with the purpose of est...
We propose a method for estimating VaR and related risk measures describing the tail of the conditio...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
Although stock prices fluctuate, the variations are relatively small and are frequently assumed to b...
This paper presents two applications of Extreme Value Theory (EVT) to financial markets: computation...
Background - Extreme value theory (EVT) is one possible approach to identify and manage the extreme ...
textabstractA scientific way of looking beyond the worst-case return is to employ statistical extrem...
We propose a new framework exploiting realized measures of volatility to estimate and forecast extre...
: Extreme Value Theory (EVT) originated, in 1928, in the work of Fisher and Tippett describing ...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
One of the key components of financial risk management is risk measurement. This typically requires ...
Recent contributions to the financial econometrics literature exploit high-frequency (HF) data to im...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...