This article studies three robust portfolio optimization models under partially known distributions. The proposed models are composed of min-max optimization problems under the worst-case conditional value-at-risk consideration. By using the duality theory, the models are reduced to simple mathematical programming problems where the underlying random variables have a mixture distribution or a box discrete distribution. They become linear programming problems when the loss function is linear. The solutions between the original problems and the reduced ones are proved to be identical. Furthermore, for the mixture distribution, it is shown that the three profit-risk optimization models have the same efficient frontier. The reformulated linear ...
It is unrealistic to formulate the problems arising under uncertain environments as deterministic op...
Which characteristics of a portfolio are important, how can we select an optimal portfolio and which...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
This article studies three robust portfolio optimization models under partially known distributions....
This paper considers the worst-case CVaR in situation where only partial information on the underlyi...
This paper considers the worst-case CVaR in the case where only partial information on the underlyin...
The main purpose of this thesis is to develop methodological and practical improvements on robust po...
01 Abstract: This thesis is concerned with the robust methods in portfolio theory. Different risk me...
Robust optimization, one of the most popular topics in the field of optimization and control since t...
In times of great insecurity and turbulence on every major stock exchange, it is evident that contro...
EnWe define and compare robust and non-robust versions of Vol-VaR- and CVaR-portfolio selection mode...
We examin empirical performances of two alterna- tive robust optimization models, namely the worst-c...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
We solve a linear chance constrained portfolio optimization problem using Robust Optimization (RO) m...
This paper focuses on the computation issue of portfolio optimization with scenario-based CVaR. Acco...
It is unrealistic to formulate the problems arising under uncertain environments as deterministic op...
Which characteristics of a portfolio are important, how can we select an optimal portfolio and which...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
This article studies three robust portfolio optimization models under partially known distributions....
This paper considers the worst-case CVaR in situation where only partial information on the underlyi...
This paper considers the worst-case CVaR in the case where only partial information on the underlyin...
The main purpose of this thesis is to develop methodological and practical improvements on robust po...
01 Abstract: This thesis is concerned with the robust methods in portfolio theory. Different risk me...
Robust optimization, one of the most popular topics in the field of optimization and control since t...
In times of great insecurity and turbulence on every major stock exchange, it is evident that contro...
EnWe define and compare robust and non-robust versions of Vol-VaR- and CVaR-portfolio selection mode...
We examin empirical performances of two alterna- tive robust optimization models, namely the worst-c...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
We solve a linear chance constrained portfolio optimization problem using Robust Optimization (RO) m...
This paper focuses on the computation issue of portfolio optimization with scenario-based CVaR. Acco...
It is unrealistic to formulate the problems arising under uncertain environments as deterministic op...
Which characteristics of a portfolio are important, how can we select an optimal portfolio and which...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...