Dynamic decision-making under uncertainty has a long and distinguished history in operations research. Due to the curse of dimensionality, solution schemes that naïvely partition or discretize the support of the random problem parameters are limited to small and medium-sized problems, or they require restrictive modeling assumptions (e.g., absence of recourse actions). In the last few decades, several solution techniques have been proposed that aim to alleviate the curse of dimensionality. Amongst these is the decision rule approach, which faithfully models the random process and instead approximates the feasible region of the decision problem. In this paper, we survey the major theoretical findings relating to this approach, and we investi...
This paper considers model uncertainty for multistage stochastic programs. The data and information ...
The concepts of risk-aversion, chance-constrained optimization, and robust optimization have develop...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Dynamic decision-making under uncertainty has a long and distinguished history in opera-tions resear...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
Dynamic decision problems affected by uncertain data are notoriously hard to solve due to the prese...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Uncertainty is a pervasive challenge in decision and risk management and it is usually studied by qu...
A common approach in coping with multiperiod optimization problems under uncertainty where statistic...
This paper considers model uncertainty for multistage stochastic programs. The data and information ...
The concepts of risk-aversion, chance-constrained optimization, and robust optimization have develop...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Dynamic decision-making under uncertainty has a long and distinguished history in opera-tions resear...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
Dynamic decision problems affected by uncertain data are notoriously hard to solve due to the prese...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Uncertainty is a pervasive challenge in decision and risk management and it is usually studied by qu...
A common approach in coping with multiperiod optimization problems under uncertainty where statistic...
This paper considers model uncertainty for multistage stochastic programs. The data and information ...
The concepts of risk-aversion, chance-constrained optimization, and robust optimization have develop...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...