Recently a regret portfolio optimization approach is proposed by minimizing the difference between the maximum return and the sum of each portfolio return which can efficiently overcome the drawback that the classical portfolio optimization model cannot catch the core of the risk diversification. In this paper, we generalize the regret portfolio optimization approach by considering to minimize the weighted sum of the difference between the return and the sum of each portfolio return. We suppose that the decision-maker is ambiguous about the choice of weights and he choose a robust optimization approach to cope with this ambiguity. Then we aim at minimizing the maximization of the weighted sum of the difference between the return and the sum...
The minmax regret problem for combinatorial optimization under uncertainty can be viewed as a zero-s...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
Abstract — We consider decision making in a Markovian setup where the reward parameters are not know...
In this paper, a new methodology for computing relative-robust portfolios based on minimax regret is...
We extend Relative Robust Portfolio Optimization models to allow portfolios to optimize their perfor...
We extend Relative Robust Portfolio Optimization models to allow portfolios to optimize their perfor...
Summarization: An efficient frontier in the typical portfolio selection problem provides an illustra...
This paper presents new models which seek to optimize the first and second moments of asset returns ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
Considering mean-variance portfolio problems with uncertain model parameters, we contrast the classi...
This article studies three robust portfolio optimization models under partially known distributions....
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
In this paper, we propose a probabilistic model for minimizing the anticipated regret in com-binator...
In financial optimization problem, the optimal portfolios usually depend heavily on the distribution...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
The minmax regret problem for combinatorial optimization under uncertainty can be viewed as a zero-s...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
Abstract — We consider decision making in a Markovian setup where the reward parameters are not know...
In this paper, a new methodology for computing relative-robust portfolios based on minimax regret is...
We extend Relative Robust Portfolio Optimization models to allow portfolios to optimize their perfor...
We extend Relative Robust Portfolio Optimization models to allow portfolios to optimize their perfor...
Summarization: An efficient frontier in the typical portfolio selection problem provides an illustra...
This paper presents new models which seek to optimize the first and second moments of asset returns ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
Considering mean-variance portfolio problems with uncertain model parameters, we contrast the classi...
This article studies three robust portfolio optimization models under partially known distributions....
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
In this paper, we propose a probabilistic model for minimizing the anticipated regret in com-binator...
In financial optimization problem, the optimal portfolios usually depend heavily on the distribution...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
The minmax regret problem for combinatorial optimization under uncertainty can be viewed as a zero-s...
Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have bee...
Abstract — We consider decision making in a Markovian setup where the reward parameters are not know...