On the basis of a sample of either independent, identically distributed or possibly weakly dependent and stationary random variables from an unknown model F with a heavy right-tail function, and for any small level q, the value-at-risk (VaR) at the level q, i.e. the size of the loss that occurs with a probability q, is estimated by new semi-parametric reduced-bias procedures based on the mean-of-order-p of a set of k quotients of upper order statistics, with p an adequate real number. After a brief reference to the asymptotic properties of these new VaR-estimators, we proceed to an overall comparison of alternative VaR-estimators, for finite samples, through large-scale Monte-Carlo simulation techniques. Possible algorithms for an adaptive ...
We design a system for calculating the quantile of a random variable that allows us combining parame...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
• Heavy tailed-models are quite useful in many fields, like insurance, finance, telecom-munications,...
PEst-OE/MAT/UI0006/2011 PEst-OE/MAT/UI0297/2011In this paper, for heavy-tailed models and through th...
Value-at-risk (VaR) and conditional value-at-risk (CVaR) are two widely used risk measures of large ...
This paper proposes a semi-nonparametric (SNP) methodology for computing portfolio value-at-risk (Va...
In extreme value (EV) analysis, the EV index (EVI), , is the primary parame- ter of extreme events....
textabstractAccurate prediction of the frequency of extreme events is of primary importance in many ...
In this paper, the performance of the extreme value theory in value-at-risk calculations is compared...
In this article we present a new variance reduction technique for estimating the Value-at-Risk (VaR)...
The conditional value-at-risk (CVaR) is a useful risk measure in fields such as machine learning, fi...
This thesis proposes new approaches to Value-at-Risk estimation using (1) Multivariate GARCH Dynamic...
The idea of statistical learning can be applied in financial risk management. In recent years, value...
This paper analyses several volatility models by examining their ability to forecast the Value-at-Ri...
We design a system for calculating the quantile of a random variable that allows us combining parame...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
• Heavy tailed-models are quite useful in many fields, like insurance, finance, telecom-munications,...
PEst-OE/MAT/UI0006/2011 PEst-OE/MAT/UI0297/2011In this paper, for heavy-tailed models and through th...
Value-at-risk (VaR) and conditional value-at-risk (CVaR) are two widely used risk measures of large ...
This paper proposes a semi-nonparametric (SNP) methodology for computing portfolio value-at-risk (Va...
In extreme value (EV) analysis, the EV index (EVI), , is the primary parame- ter of extreme events....
textabstractAccurate prediction of the frequency of extreme events is of primary importance in many ...
In this paper, the performance of the extreme value theory in value-at-risk calculations is compared...
In this article we present a new variance reduction technique for estimating the Value-at-Risk (VaR)...
The conditional value-at-risk (CVaR) is a useful risk measure in fields such as machine learning, fi...
This thesis proposes new approaches to Value-at-Risk estimation using (1) Multivariate GARCH Dynamic...
The idea of statistical learning can be applied in financial risk management. In recent years, value...
This paper analyses several volatility models by examining their ability to forecast the Value-at-Ri...
We design a system for calculating the quantile of a random variable that allows us combining parame...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...