This paper examines the precision of estimators of Quantile-Based Risk Measures (Value at Risk, Expected Shortfall, Spectral Risk Measures). It first addresses the question of how to estimate the precision of these estimators, and proposes a Monte Carlo method that is free of some of the limitations of existing approaches. It then investigates the distribution of risk estimators, and presents simulation results suggesting that the common practice of relying on asymptotic normality results might be unreliable with the sample sizes commonly available to them. Finally, it investigates the relationship between the precision of different risk estimators and the distribution of underlying losses (or returns), and yields a number of useful conc...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...
This paper examines the precision of estimators of Quantile-Based Risk Measures (Value at Risk, Expe...
This paper examines the precision of estimators of Quantile-Based Risk Measures (Value at Risk, Expe...
In the present paper, we study quantile risk measures and their domain. Our starting point is that, ...
In the present paper, we study quantile risk measures and their domain. Our starting point is that, ...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Th...
We explore the Monte Carlo steps required to reduce the sampling error of the estimated 99.9% quanti...
We introduce a class of quantile-based risk measures that generalize Value at Risk (VaR) and, likewi...
We introduce a class of quantile-based risk measures that generalize Value at Risk (VaR) and, likewi...
The focus of this thesis is on the employment of theoretical and practical quantile methods in addre...
In this study, we derive the joint asymptotic distributions of functionals of quantile estimators (t...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...
This paper examines the precision of estimators of Quantile-Based Risk Measures (Value at Risk, Expe...
This paper examines the precision of estimators of Quantile-Based Risk Measures (Value at Risk, Expe...
In the present paper, we study quantile risk measures and their domain. Our starting point is that, ...
In the present paper, we study quantile risk measures and their domain. Our starting point is that, ...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Th...
We explore the Monte Carlo steps required to reduce the sampling error of the estimated 99.9% quanti...
We introduce a class of quantile-based risk measures that generalize Value at Risk (VaR) and, likewi...
We introduce a class of quantile-based risk measures that generalize Value at Risk (VaR) and, likewi...
The focus of this thesis is on the employment of theoretical and practical quantile methods in addre...
In this study, we derive the joint asymptotic distributions of functionals of quantile estimators (t...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
This article is concerned with evaluating Value-at-Risk estimates. It is well known that using only ...
This paper is concerned with evaluating value at risk estimates. It is well known that using only bi...