Dynamic optimization problems affected by uncertainty are ubiquitous in many application domains. Decision makers typically model the uncertainty through random variables governed by a probability distribution. If the distribution is precisely known, then the emerging optimization problems constitute stochastic programs or chance constrained programs. On the other hand, if the distribution is at least partially unknown, then the emanating optimization problems represent robust or distributionally robust optimization problems. In this thesis, we leverage techniques from stochastic and distributionally robust optimization to address complex problems in finance, energy systems management and, more abstractly, applied probability. In particular...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
In this paper, we introduce an approach for constructing uncertainty sets for robust optimization us...
Uncertainty poses a significant challenge to decision making in many real-world problems, especially...
Multistage optimization under uncertainty refers to sequential decision-making with the presence of ...
Many decision problems can be formulated as mathematical optimization models. While deterministic op...
Dynamic decision problems affected by uncertain data are notoriously hard to solve due to the prese...
In a typical optimization problem, uncertainty does not depend on the decisions being made in the op...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
This paper investigates how the choice of stochastic approaches and distribution assumptions impacts...
Abstract Uncertainty is often present in environmental and energy economics. Tra-ditional approaches...
In this thesis, we study distributionally robust stochastic optimization (DRSO), a recent emerging f...
Stochastic optimization is a popular modeling paradigm for decision-making under uncertainty and has...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
Stochastic programming can effectively describe many decision making problems in uncertain environme...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
In this paper, we introduce an approach for constructing uncertainty sets for robust optimization us...
Uncertainty poses a significant challenge to decision making in many real-world problems, especially...
Multistage optimization under uncertainty refers to sequential decision-making with the presence of ...
Many decision problems can be formulated as mathematical optimization models. While deterministic op...
Dynamic decision problems affected by uncertain data are notoriously hard to solve due to the prese...
In a typical optimization problem, uncertainty does not depend on the decisions being made in the op...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
This paper investigates how the choice of stochastic approaches and distribution assumptions impacts...
Abstract Uncertainty is often present in environmental and energy economics. Tra-ditional approaches...
In this thesis, we study distributionally robust stochastic optimization (DRSO), a recent emerging f...
Stochastic optimization is a popular modeling paradigm for decision-making under uncertainty and has...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
Stochastic programming can effectively describe many decision making problems in uncertain environme...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
In this paper, we introduce an approach for constructing uncertainty sets for robust optimization us...
Uncertainty poses a significant challenge to decision making in many real-world problems, especially...