In this paper, the performance of the extreme value theory in value-at-risk calculations is compared to the performances of other well-known modeling techniques, such as GARCH, variance-covariance (Var-Cov) method and historical simulation in a volatile stock market. The models studied can be classified into two groups. The first group consists of GARCH(1, 1) and GARCH(1, 1)- t models which yield highly volatile quantile forecasts. The other group, consisting of historical simulation, Var-Cov approach, adaptive generalized Pareto distribution (GPD) and nonadaptive GPD models, leads to more stable quantile forecasts. The quantile forecasts of GARCH(1, 1) models are excessively volatile relative to the GPD quantile forecasts. This makes the G...
This paper compares a number of different extreme value models for determining the value at risk (Va...
This paper compares a number of different extreme value models for determining the value at risk (Va...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
In this paper, the performance of the extreme value theory in value-at-risk calculations is compared...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
The ability of the Generalised Extreme Value (GEV) and Generalised Logistic (GL) distributions to fi...
Assessing the probability of rare and extreme events is an important issue in the risk management of...
The paper addresses an inefficiency of the traditional approach in modeling the tail risk, particula...
Abstract: Based on extreme value theory and General Pareto Distribution (GPD), the paper analyzes an...
The paper addresses an inefficiency of the traditional approach in modeling the tail risk, particula...
Although stock prices fluctuate, the variations are relatively small and are frequently assumed to b...
The ability of the Generalised Extreme Value (GEV) and Generalised Logistic (GL) distributions to fi...
Although stock prices fluctuate, the variations are relatively small and are frequently assumed to b...
This paper compares a number of different extreme value models for determining the value at risk (Va...
This paper compares a number of different extreme value models for determining the value at risk (Va...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...
In this paper, the performance of the extreme value theory in value-at-risk calculations is compared...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
We compare the traditional GARCH models with a semiparametric approach based on extreme value theory...
The ability of the Generalised Extreme Value (GEV) and Generalised Logistic (GL) distributions to fi...
Assessing the probability of rare and extreme events is an important issue in the risk management of...
The paper addresses an inefficiency of the traditional approach in modeling the tail risk, particula...
Abstract: Based on extreme value theory and General Pareto Distribution (GPD), the paper analyzes an...
The paper addresses an inefficiency of the traditional approach in modeling the tail risk, particula...
Although stock prices fluctuate, the variations are relatively small and are frequently assumed to b...
The ability of the Generalised Extreme Value (GEV) and Generalised Logistic (GL) distributions to fi...
Although stock prices fluctuate, the variations are relatively small and are frequently assumed to b...
This paper compares a number of different extreme value models for determining the value at risk (Va...
This paper compares a number of different extreme value models for determining the value at risk (Va...
We proposed a method to estimate extreme conditional quantiles by combining quantile GARCH model of ...