In this paper, we study risk-averse models for multicriteria optimization problems under uncertainty. We use a weighted sum-based scalarization and take a robust approach by considering a set of scalarization vectors to address the ambiguity and inconsistency in the relative weights of each criterion. We model the risk aversion of the decision makers via the concept of multivariate conditional value-at-risk (CVaR). First, we introduce a model that optimizes the worst-case multivariate CVaR, and develop a finitely convergent delayed cut generation algorithm for finite probability spaces. We also show that this model can be reformulated as a compact linear program under certain assumptions. In addition, for the cut generation problem, which i...
In this study, we consider two classes of multicriteria two-stage stochastic programs in finite prob...
Whenever we have a decision to make, there is always some risk to take. From a mathematical perspect...
In this study, we consider two classes of multicriteria two-stage stochastic programs in finite prob...
In this paper, we study risk-averse models for multicriteria optimization problems under uncertainty...
In this paper, we study risk-averse models for multicriteria optimization problems under uncertainty...
Thesis (Ph.D.)--University of Washington, 2018Risk-averse stochastic programming provides means to i...
Thesis (Ph.D.)--University of Washington, 2018Risk-averse stochastic programming provides means to i...
We consider a class of multicriteria stochastic optimization problems that features benchmarking con...
The ability to compare random outcomes based on the decision makers' risk preferences is crucial to ...
It is of crucial importance to develop risk-averse models for multicriteria decision making under un...
It is of crucial importance to develop risk-averse models for multicriteria decision making under un...
Multiobjective stochastic programming is a field that is well suited to tackling problems that arise...
We consider a class of stochastic optimization problems that features benchmarking preference relati...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
We study a two-stage stochastic linear optimization problem where the recourse function is risk-aver...
In this study, we consider two classes of multicriteria two-stage stochastic programs in finite prob...
Whenever we have a decision to make, there is always some risk to take. From a mathematical perspect...
In this study, we consider two classes of multicriteria two-stage stochastic programs in finite prob...
In this paper, we study risk-averse models for multicriteria optimization problems under uncertainty...
In this paper, we study risk-averse models for multicriteria optimization problems under uncertainty...
Thesis (Ph.D.)--University of Washington, 2018Risk-averse stochastic programming provides means to i...
Thesis (Ph.D.)--University of Washington, 2018Risk-averse stochastic programming provides means to i...
We consider a class of multicriteria stochastic optimization problems that features benchmarking con...
The ability to compare random outcomes based on the decision makers' risk preferences is crucial to ...
It is of crucial importance to develop risk-averse models for multicriteria decision making under un...
It is of crucial importance to develop risk-averse models for multicriteria decision making under un...
Multiobjective stochastic programming is a field that is well suited to tackling problems that arise...
We consider a class of stochastic optimization problems that features benchmarking preference relati...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
We study a two-stage stochastic linear optimization problem where the recourse function is risk-aver...
In this study, we consider two classes of multicriteria two-stage stochastic programs in finite prob...
Whenever we have a decision to make, there is always some risk to take. From a mathematical perspect...
In this study, we consider two classes of multicriteria two-stage stochastic programs in finite prob...