In this work we analyze and compare the performances of VaR-based estimatorswith respect to three different classes of distributions, i.e., Gaussian, Stable and Pareto, and to different emerging markets, i.e., Egypt, Qatar and Mexico. This is motivated by the evidence that there are points of distinction between emerging and developed markets mainly relating to the speed and reliability of information available to investors.We propose a computational Threshold Accepting-VaR based algorithm (TAVaR) for optimally estimating the Pareto tail index. A Monte Carlo bias estimation analysis is also carried out by comparing our proposed methodology with the Hill estimator and a variant of it
Estimation of the tail index of stationary, fat-tailed return distributions is non-trivial since the...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In this paper we study the tail behaviour of eight major market indexes stratifying data according t...
In this work we analyze and compare the performances of VaR-based estimatorswith respect to three di...
In this work, we backtest and compare, under the VaR risk measure, the fitting performances of three...
In this paper, a new regression-based approach for the estimation of the tail index of heavy-tailed ...
Extreme Value Theory is increasingly used in the modelling of financial time series. The non-normali...
textabstractThe selection of upper order statistics in tail estimation is notoriously difficult. Mos...
Estimation of the Pareto tail index from extreme order statistics is an important problem in many se...
Emerging countries are held to be subject to more frequent and more pronounced external and internal...
Motivated by a practical application, this paper investigates robust estimation of economic indicato...
This paper investigates estimation of extreme risk in a number of stock markets in the Gulf Coopera...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In this paper we consider an autoregressive Pareto process which can be used as an alternative to h...
A new regression-based approach for the estimation of the tail index of heavy-tailed distributions w...
Estimation of the tail index of stationary, fat-tailed return distributions is non-trivial since the...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In this paper we study the tail behaviour of eight major market indexes stratifying data according t...
In this work we analyze and compare the performances of VaR-based estimatorswith respect to three di...
In this work, we backtest and compare, under the VaR risk measure, the fitting performances of three...
In this paper, a new regression-based approach for the estimation of the tail index of heavy-tailed ...
Extreme Value Theory is increasingly used in the modelling of financial time series. The non-normali...
textabstractThe selection of upper order statistics in tail estimation is notoriously difficult. Mos...
Estimation of the Pareto tail index from extreme order statistics is an important problem in many se...
Emerging countries are held to be subject to more frequent and more pronounced external and internal...
Motivated by a practical application, this paper investigates robust estimation of economic indicato...
This paper investigates estimation of extreme risk in a number of stock markets in the Gulf Coopera...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In this paper we consider an autoregressive Pareto process which can be used as an alternative to h...
A new regression-based approach for the estimation of the tail index of heavy-tailed distributions w...
Estimation of the tail index of stationary, fat-tailed return distributions is non-trivial since the...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In this paper we study the tail behaviour of eight major market indexes stratifying data according t...