The standard approach to formulating stochastic programs is based on the assumption that the stochastic process is independent of the optimization decision. We address a class of problems where the optimization decisions influence the time of information discovery for a subset of the uncertain parameters. We extentd the standard modeling approach by presenting a disjunctive programming formulation that accommodates stochastic programs for this class of ploblems. A set of theoretical properties that lead to reduction in the size of the model is identified. A Lagrange duality based branch and bound algorithm is also presented
Dynamic decision-making under uncertainty has a long and distinguished history in operations researc...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
Stochastic methods are present in our daily lives, especially when we need to make a decision based ...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
We address a class of planning problems where the optimization decisions influence the time of infor...
In a typical optimization problem, uncertainty does not depend on the decisions being made in the op...
Stochastic programming with recourse usually assumes uncertainty to be exogenous. Our work presents ...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Stochastic programs are usually formulated with probability distributions that are exogenously given...
Abstract Stochastic Programming (SP) was first introduced by George Dantzig in the 1950’s. Since tha...
<p>This dissertation addresses the modeling and solution of mixed-integer linear multistage stochast...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Stochastic programming is a mathematical technique for decision making under uncertainty using proba...
Stochastic optimization is an optimization method that solves stochastic problems for minimizing or ...
Dynamic decision-making under uncertainty has a long and distinguished history in operations researc...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
Stochastic methods are present in our daily lives, especially when we need to make a decision based ...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
We address a class of planning problems where the optimization decisions influence the time of infor...
In a typical optimization problem, uncertainty does not depend on the decisions being made in the op...
Stochastic programming with recourse usually assumes uncertainty to be exogenous. Our work presents ...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Stochastic programs are usually formulated with probability distributions that are exogenously given...
Abstract Stochastic Programming (SP) was first introduced by George Dantzig in the 1950’s. Since tha...
<p>This dissertation addresses the modeling and solution of mixed-integer linear multistage stochast...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Stochastic programming is a mathematical technique for decision making under uncertainty using proba...
Stochastic optimization is an optimization method that solves stochastic problems for minimizing or ...
Dynamic decision-making under uncertainty has a long and distinguished history in operations researc...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
Stochastic methods are present in our daily lives, especially when we need to make a decision based ...