[[abstract]]Many empirical studies suggest that the distribution of risk factors has heavy tails. One always assumes that the underlying risk factors follow a multivariate normal distribution that is a assumption in conflict with empirical evidence. We consider a multivariate t distribution for capturing the heavy tails and a quadratic function of the changes is generally used in the risk factor for a non-linear asset. Although Monte Carlo analysis is by far the most powerful method to evaluate a portfolio Value-at-Risk (VaR), a major drawback of this method is that it is computationally demanding. In this paper, we first transform the assets into the risk on the returns by using a quadratic approximation for the portfolio. Second, we model...
The paper deals with Monte Carlo simulation method and its application in Risk Management. The autho...
The traditional Markowitz mean-variance portfolio optimization theory uses volatility as the sole me...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
[[abstract]]Risk management is an important issue when there is a catastrophic event that affects as...
In this article we present a new variance reduction technique for estimating the Value-at-Risk (VaR)...
This paper describes,analyzes and evaluates an algorithm for estimating portfolio loss probabilities...
This paper describes, analyzes and evaluates an algorithm for estimating portfolio loss probabilitie...
[[abstract]]Importance sampling is a powerful variance reduction technique for rare event simulation...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
AbstractThis paper proposes a novel nonlinear model for calculating Value-at-Risk (VaR) when the mar...
This paper contains a comparison of in-sample and out-of-sample performances between the resampled e...
For the purpose of quantifying financial risks, risk managers need to model the behavior of financia...
In this master thesis we study and implement a model for market risk in a portfolio consisting of bo...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
Monte Carlo simulation is one of the commonly used methods for risk estimation on financial markets,...
The paper deals with Monte Carlo simulation method and its application in Risk Management. The autho...
The traditional Markowitz mean-variance portfolio optimization theory uses volatility as the sole me...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...
[[abstract]]Risk management is an important issue when there is a catastrophic event that affects as...
In this article we present a new variance reduction technique for estimating the Value-at-Risk (VaR)...
This paper describes,analyzes and evaluates an algorithm for estimating portfolio loss probabilities...
This paper describes, analyzes and evaluates an algorithm for estimating portfolio loss probabilitie...
[[abstract]]Importance sampling is a powerful variance reduction technique for rare event simulation...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
AbstractThis paper proposes a novel nonlinear model for calculating Value-at-Risk (VaR) when the mar...
This paper contains a comparison of in-sample and out-of-sample performances between the resampled e...
For the purpose of quantifying financial risks, risk managers need to model the behavior of financia...
In this master thesis we study and implement a model for market risk in a portfolio consisting of bo...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
Monte Carlo simulation is one of the commonly used methods for risk estimation on financial markets,...
The paper deals with Monte Carlo simulation method and its application in Risk Management. The autho...
The traditional Markowitz mean-variance portfolio optimization theory uses volatility as the sole me...
[[abstract]]Simulation of small probabilities has important applications in many disciplines. The pr...