The objective of this paper is to study the effect of importance sampling (IS) techniques on stochastic credit portfolio optimization methods. I introduce a framework that leads to a reduction of volatility of resulting optimal portfolio asset weights. Performance of the method is documented in terms of implementation simplicity and accuracy. It is shown that the incorporated methods make solutions more precise given a limited computer performance by means of a reduced size of the initially necessary optimization model. For a presented example variance reduction of risk measures and asset weights by a factor of at least 350 was achieved. I finally outline how results can be mapped into business practice by utilizing readily available softwa...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
The paper discusses an application of stochastic programming to the portfolio selection problem invo...
This paper describes, analyzes and evaluates an algorithm for estimating portfolio loss probabilitie...
The objective of this paper is to study the effect of importance sampling (IS) techniques on stochas...
The problem of the asymmetric behaviour and fat tails of portfolios of credit risky corporate assets...
Present work deals with the portfolio selection problem using mean-risk models where analysed risk m...
Abstract: Standard credit portfolio models do not model market risk factors, such as risk-free inter...
The aim of this work is to explore how importance sampling (IS) techniques may improve internal bank...
Monte Carlo simulation is widely used to measure the credit risk in portfolios of loans, corporate ...
The importance sampling method exponential twisting is used to estimate Utility-based Shortfall Risk...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
Recent developments in portfolio and risk management are driven by the need of quantitative risk ass...
Operations Research, forthcoming We provide a sequential Monte Carlo method for estimating rare-even...
This paper describes,analyzes and evaluates an algorithm for estimating portfolio loss probabilities...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
The paper discusses an application of stochastic programming to the portfolio selection problem invo...
This paper describes, analyzes and evaluates an algorithm for estimating portfolio loss probabilitie...
The objective of this paper is to study the effect of importance sampling (IS) techniques on stochas...
The problem of the asymmetric behaviour and fat tails of portfolios of credit risky corporate assets...
Present work deals with the portfolio selection problem using mean-risk models where analysed risk m...
Abstract: Standard credit portfolio models do not model market risk factors, such as risk-free inter...
The aim of this work is to explore how importance sampling (IS) techniques may improve internal bank...
Monte Carlo simulation is widely used to measure the credit risk in portfolios of loans, corporate ...
The importance sampling method exponential twisting is used to estimate Utility-based Shortfall Risk...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
Recent developments in portfolio and risk management are driven by the need of quantitative risk ass...
Operations Research, forthcoming We provide a sequential Monte Carlo method for estimating rare-even...
This paper describes,analyzes and evaluates an algorithm for estimating portfolio loss probabilities...
This paper proposes and evaluates variance reduction techniques for efficient estimation of portfoli...
The paper discusses an application of stochastic programming to the portfolio selection problem invo...
This paper describes, analyzes and evaluates an algorithm for estimating portfolio loss probabilitie...