Stochastic optimization is an optimization method that solves stochastic problems for minimizing or maximizing an objective function when there is randomness in the optimization process. In this dissertation, various stochastic optimization problems from the areas of Manufacturing, Health care, and Information Cascade are investigated in networks systems. These stochastic optimization problems aim to make plan for using existing resources to improve production efficiency, customer satisfaction, and information influence within limitation. Since the strategies are made for future planning, there are environmental uncertainties in the network systems. Sometimes, the environment may be changed due to the action of the decision maker. To handle...
Decision analysis provides a framework for searching an optimal solution under uncertainties and pot...
Thesis (Ph.D.)--University of Washington, 2018Due to the rise in American healthcare costs, clinic a...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
Stochastic optimization is an optimization method that solves stochastic problems for minimizing or ...
In a typical optimization problem, uncertainty does not depend on the decisions being made in the op...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation work combines two lines of work related to stochastic optimization, one focused on...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
It is possible to simulate a lot of real decision-making and conflict situations by random weighted ...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
We study stochastic optimization problems with decisions truncated by random variables and its appli...
Applying method of stochastic algorithms to solution of discrete optimization problem
This Dagstuhl seminar brought together researchers from statistical ranking and selection; experimen...
Decision analysis provides a framework for searching an optimal solution under uncertainties and pot...
Thesis (Ph.D.)--University of Washington, 2018Due to the rise in American healthcare costs, clinic a...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
Stochastic optimization is an optimization method that solves stochastic problems for minimizing or ...
In a typical optimization problem, uncertainty does not depend on the decisions being made in the op...
The standard approach to formulating stochastic programs is based on the assumption that the stochas...
The course covers a variety of topics in stochastic optimization. To begin with, some ap-proaches to...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation work combines two lines of work related to stochastic optimization, one focused on...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
It is possible to simulate a lot of real decision-making and conflict situations by random weighted ...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
We study stochastic optimization problems with decisions truncated by random variables and its appli...
Applying method of stochastic algorithms to solution of discrete optimization problem
This Dagstuhl seminar brought together researchers from statistical ranking and selection; experimen...
Decision analysis provides a framework for searching an optimal solution under uncertainties and pot...
Thesis (Ph.D.)--University of Washington, 2018Due to the rise in American healthcare costs, clinic a...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...