Finding optimal decisions often involves the consideration of certain random or unknown parameters. A standard approach is to replace the random parameters by the expectations and to solve a deterministic mathematical program. A second approach is to consider possible future scenarios and the decision that would be best under each of these scenarios. The question then becomes how to choose among these alternatives. Both approaches may produce solutions that are far from optimal in the stochastic programming model that explicitly includes the random parameters. In this paper, we illustrate this advantage of a stochastic program model through two examples that are representative of the range of problems considered in stochastic programming. T...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Optimization problems arising in practice involve random model parameters. This book features many i...
Finding optimal decisions often involves the consideration f certain random or unknown parameters. A...
A dissertation submitted to the Faculty of Arts, University of the Witwatersrand, Johannesburg, in ...
Stochastic linear programs have been rarely used in practical situations largely because of their co...
Stochastic programs are usually hard to solve when applied to real-world problems; a common approach...
Although stochastic programming is probably the most effective frameworks for handling decision prob...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Sequential decision problems under uncertainty are commonly studied with stochastic programing. An i...
http://deepblue.lib.umich.edu/bitstream/2027.42/3630/5/bap3206.0001.001.pdfhttp://deepblue.lib.umich...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
Abstract Stochastic Programming (SP) was first introduced by George Dantzig in the 1950’s. Since tha...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
Mathematical programming is one of a number of operations research techniques that employs mathemati...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Optimization problems arising in practice involve random model parameters. This book features many i...
Finding optimal decisions often involves the consideration f certain random or unknown parameters. A...
A dissertation submitted to the Faculty of Arts, University of the Witwatersrand, Johannesburg, in ...
Stochastic linear programs have been rarely used in practical situations largely because of their co...
Stochastic programs are usually hard to solve when applied to real-world problems; a common approach...
Although stochastic programming is probably the most effective frameworks for handling decision prob...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Sequential decision problems under uncertainty are commonly studied with stochastic programing. An i...
http://deepblue.lib.umich.edu/bitstream/2027.42/3630/5/bap3206.0001.001.pdfhttp://deepblue.lib.umich...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
Abstract Stochastic Programming (SP) was first introduced by George Dantzig in the 1950’s. Since tha...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
Mathematical programming is one of a number of operations research techniques that employs mathemati...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Optimization problems arising in practice involve random model parameters. This book features many i...