In this paper, we extend the multi-period mean-variance optimization framework to worst-case design with multiple rival return and risk scenarios. Our approach involves a min-max algorithm and a multi-period mean-variance optimization framework for the stochastic aspects of the scenario tree. Multi-period portfolio optimization entails the construction of a scenario tree representing a discretised estimate of uncertainties and associated probabilities in future stages. The expected value of the portfolio return is maximized simultaneously with the minimization of its variance. There are two sources of further uncertainty that might require a strengthening of the robustness of the decision. The first is that some rival uncertainty scenarios ...
International audienceIn this paper, we discuss several different styles of multi-period mean-varian...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
A robust minimax approach for optimal investment decisions with imprecise return forecasts and risk ...
We develop and test multistage portfolio selection models maximizing expected end-of-horizon return ...
This paper presents new models which seek to optimize the first and second moments of asset returns ...
We consider robust pre-commitment and time-consistent mean-variance optimal asset allocation strate...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
We study a multi-period mean-variance portfolio selection problem with an uncertain time horizon and...
Mean-variance portfolio analysis provided the first quantitative treatment of the trade-off between ...
We develop and test multistage portfolio selection models maximizing expected end-of-horizon wealth ...
The classical Markowitz approach to portfolio selection is compromised by two major shortcomings. Fi...
University of Technology Sydney. Faculty of Science.This thesis contributes towards the development ...
This article studies three robust portfolio optimization models under partially known distributions....
The mean-variance formulation by Markowitz for modern optimal portfolio selection has been analyzed ...
International audienceIn this paper, we discuss several different styles of multi-period mean-varian...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
A robust minimax approach for optimal investment decisions with imprecise return forecasts and risk ...
We develop and test multistage portfolio selection models maximizing expected end-of-horizon return ...
This paper presents new models which seek to optimize the first and second moments of asset returns ...
We consider robust pre-commitment and time-consistent mean-variance optimal asset allocation strate...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
We study a multi-period mean-variance portfolio selection problem with an uncertain time horizon and...
Mean-variance portfolio analysis provided the first quantitative treatment of the trade-off between ...
We develop and test multistage portfolio selection models maximizing expected end-of-horizon wealth ...
The classical Markowitz approach to portfolio selection is compromised by two major shortcomings. Fi...
University of Technology Sydney. Faculty of Science.This thesis contributes towards the development ...
This article studies three robust portfolio optimization models under partially known distributions....
The mean-variance formulation by Markowitz for modern optimal portfolio selection has been analyzed ...
International audienceIn this paper, we discuss several different styles of multi-period mean-varian...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...