Utility preference robust optimization (PRO) has recently been proposed to deal with optimal decision making problems where the decision maker's (DM) preference over gains and losses is ambiguous. In this paper, we take a step further to investigate the case that the DM's preference is not only ambiguous but also potentially inconsistent or even displaying some kind of randomness. We propose a distributionally preference robust optimization (DPRO) approach where the DM's preference is represented by a random utility function and the ambiguity is described by a set of probability distributions of the random utility. An obvious advantage of the new DPRO model is that it no longer concerns the DM's preference inconsistency. In the case when th...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
We propose a formulation of a distributionally robust approach to model certain structural informat...
Motivated by data-driven decision making and sampling problems, we investigate probabilistic interpr...
Traditional stochastic optimization assumes that the probability distribution of uncertainty is know...
The concepts of risk-aversion, chance-constrained optimization, and robust optimization have develop...
We study stochastic programs where the decision maker cannot observe the distribution of the exogeno...
We use distributionally robust stochastic programs (DRSP) to model a general class of newsvendor pro...
Distributionally robust optimization (DRO) is a modeling framework in decision making under uncertai...
We present a unified and tractable framework for distributionally robust optimization that could enc...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
The study of decision making under uncertainty is important in many areas (e.g. portfolio theory, ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
We propose a formulation of a distributionally robust approach to model certain structural informat...
Motivated by data-driven decision making and sampling problems, we investigate probabilistic interpr...
Traditional stochastic optimization assumes that the probability distribution of uncertainty is know...
The concepts of risk-aversion, chance-constrained optimization, and robust optimization have develop...
We study stochastic programs where the decision maker cannot observe the distribution of the exogeno...
We use distributionally robust stochastic programs (DRSP) to model a general class of newsvendor pro...
Distributionally robust optimization (DRO) is a modeling framework in decision making under uncertai...
We present a unified and tractable framework for distributionally robust optimization that could enc...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
The study of decision making under uncertainty is important in many areas (e.g. portfolio theory, ...
In this paper, we focus on a linear optimization problem with uncertainties, having expectations in ...
Interest in distributionally robust optimization has been increasing recently. In this dissertation,...
Robust and distributionally robust optimization are modeling paradigms for decision-making under unc...