Expected utility models in portfolio optimization is based on the assumption of complete knowledge of the distribution of random returns. In this paper, we relax this assumption to the knowledge of only the mean, covariance and support information. No additional assumption on the type of distribution such as normality is made. The investor's utility is modeled as a piecewise-linear concave function. We derive exact and approximate optimal trading strategies for a robust or maximin expected utility model, where the investor maximizes his worst case expected utility over a set of ambiguous distributions. The optimal portfolios are identified using a tractable conic programming approach. Using the optimized certainty equivalent (OCE) fram...
In financial markets with high uncertainties, the trade-off between maximizing expected return and m...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Expected utility models in portfolio optimization are based on the assumption of complete knowledge ...
Expected utility models in portfolio optimization are based on the assumption of complete knowl-edge...
Expected utility models in portfolio optimization are based on the assumption of complete knowl-edge...
In behavioral finance, aversion affects investors' judgment of future uncertainty when profit and lo...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
We consider a utility-maximization problem in a general semimartingale financial model, subject to c...
We solve a linear chance constrained portfolio optimization problem using Robust Optimization (RO) m...
Using optimization techniques in portfolio selection has attracted significant attention in financia...
Robust portfolio optimization aims to maximize the worst-case portfolio return given that the asset ...
In financial optimization problem, the optimal portfolios usually depend heavily on the distribution...
We derive analytical expressions for the risk of an investor’s expected utility under parameter unce...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
In financial markets with high uncertainties, the trade-off between maximizing expected return and m...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Expected utility models in portfolio optimization are based on the assumption of complete knowledge ...
Expected utility models in portfolio optimization are based on the assumption of complete knowl-edge...
Expected utility models in portfolio optimization are based on the assumption of complete knowl-edge...
In behavioral finance, aversion affects investors' judgment of future uncertainty when profit and lo...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
We consider a utility-maximization problem in a general semimartingale financial model, subject to c...
We solve a linear chance constrained portfolio optimization problem using Robust Optimization (RO) m...
Using optimization techniques in portfolio selection has attracted significant attention in financia...
Robust portfolio optimization aims to maximize the worst-case portfolio return given that the asset ...
In financial optimization problem, the optimal portfolios usually depend heavily on the distribution...
We derive analytical expressions for the risk of an investor’s expected utility under parameter unce...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
In financial markets with high uncertainties, the trade-off between maximizing expected return and m...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
Many financial optimization problems involve future values of security prices, interest rates and ex...