Sequential decision problems under uncertainty are commonly studied with stochastic programing. An important modeling choice is the number of stages. More stages allow additional information to be captured, but is associated with a coarser representation of uncertainty may worsen solution quality. In this paper, we study this trade-off, with the objective to advance the understanding of how the number of stages affect solution quality in stochastic programing. We show: (i) how the optimistic bounds from stochastic programing gradually suggest improved performance with more stages, while the real solution quality simultaneously deteriorates; and (ii) that real performance can be improved by adding stages, but only up to some point, after whi...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
peer reviewedIn this chapter, we present the multistage stochastic programming framework for sequent...
Sequential decision problems under uncertainty are commonly studied with stochastic programing. An i...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Although stochastic programming is probably the most effective frameworks for handling decision prob...
Finding optimal decisions often involves the consideration of certain random or unknown parameters. ...
Multistage stochastic programs, which involve sequences of decisions over time, are usually hard to ...
Abstract. Multistage stochastic programs, which involve sequences of decisions over time, are usuall...
Multistage stochastic programs, which involve sequences of decisions over time, are usually hard to ...
Abstract Traditional models in multistage stochastic programming are directed to minimizing the expe...
Multistage stochastic programs, which involve sequences of decisions over time, areusually hard to s...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
In this dissertation, we consider sequential optimization decision making problems, which entail mak...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
peer reviewedIn this chapter, we present the multistage stochastic programming framework for sequent...
Sequential decision problems under uncertainty are commonly studied with stochastic programing. An i...
To solve a decision problem under uncertainty via stochastic programming means to choose or to build...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Although stochastic programming is probably the most effective frameworks for handling decision prob...
Finding optimal decisions often involves the consideration of certain random or unknown parameters. ...
Multistage stochastic programs, which involve sequences of decisions over time, are usually hard to ...
Abstract. Multistage stochastic programs, which involve sequences of decisions over time, are usuall...
Multistage stochastic programs, which involve sequences of decisions over time, are usually hard to ...
Abstract Traditional models in multistage stochastic programming are directed to minimizing the expe...
Multistage stochastic programs, which involve sequences of decisions over time, areusually hard to s...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
In this dissertation, we consider sequential optimization decision making problems, which entail mak...
Multistage stochastic programs have applications in many areas and support policy makers in finding ...
Abstract. In this chapter, we present the multistage stochastic pro-gramming framework for sequentia...
peer reviewedIn this chapter, we present the multistage stochastic programming framework for sequent...