International audienceFinding the optimal weights for a set of financial assets is a difficult task. The mix of real world constrains and the uncertainty derived from the fact that process is based on estimates for parameters that likely to be inaccurate, often result in poor results. This paper suggests that a combination of a filtering mechanism based on random matrix theory with time-stamped resampled evolutionary multiobjective optimization algorithms enhances the robustness of forecasted efficient frontiers
Proceeding of: Intelligent Data Engineering and Automated Learning – IDEAL 2011: 12th International...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Random matrix theory (RMT) filters, applied to covariance matrices of financial returns, have recen...
International audienceFinding the optimal weights for a set of financial assets is a difficult task....
Traditional mean–variance financial portfolio optimization is based on two sets of parameters, estim...
International audienceFinancial portfolio optimization is a challenging task. One of the major diffi...
We study empirical covariance matrices in finance. Due to the limited amount of available input info...
This thesis focuses on how portfolio optimisation can be carried out under different types of uncert...
Constrained financial portfolio optimization is a challenging domain where the use of multiobjective...
Recent studies stressed the fact that covariance matrices computed from empirical financial time ser...
Financial portfolio optimization is a challenging task. One of the major difficulties is managing th...
Real world optimization of financial portfolios pose a challenging multiobjective problem that can b...
Proceeding of: Intelligent Data Engineering and Automated Learning – IDEAL 2011: 12th International...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Random matrix theory (RMT) filters, applied to covariance matrices of financial returns, have recen...
International audienceFinding the optimal weights for a set of financial assets is a difficult task....
Traditional mean–variance financial portfolio optimization is based on two sets of parameters, estim...
International audienceFinancial portfolio optimization is a challenging task. One of the major diffi...
We study empirical covariance matrices in finance. Due to the limited amount of available input info...
This thesis focuses on how portfolio optimisation can be carried out under different types of uncert...
Constrained financial portfolio optimization is a challenging domain where the use of multiobjective...
Recent studies stressed the fact that covariance matrices computed from empirical financial time ser...
Financial portfolio optimization is a challenging task. One of the major difficulties is managing th...
Real world optimization of financial portfolios pose a challenging multiobjective problem that can b...
Proceeding of: Intelligent Data Engineering and Automated Learning – IDEAL 2011: 12th International...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Random matrix theory (RMT) filters, applied to covariance matrices of financial returns, have recen...