Sampling-based stochastic programs are extensively applied in practice. However, the resulting models tend to be computationally challenging. A reasonable number of samples needs to be identified to represent the random data, and a group of approximate models can then be constructed using such a number of samples. These approximate models can produce a set of potential solutions for the original model. In this paper, we consider the problem of allocating a finite computational budget among numerous potential solutions of a two-stage linear stochastic program, which aims to identify the best solution among potential ones by conducting simulation under a given computational budget. We propose a two-stage heuristic approach to solve the comput...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
In this dissertation, we present novel sampling-based algorithms for solving two-stage stochastic pr...
Determining whether a solution is of high quality (optimal or near optimal) is a fundamental questio...
This thesis focuses on a class of information collection problems in stochastic optimisation. Algori...
Selecting a subset of the best solutions among large-scale problems is an important area of research...
We investigate the quality of solutions obtained from sample-average approximations to two-stage sto...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
textMany problems in business, engineering and science involve uncertainties but optimization of su...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
This article investigates a budget allocation problem for optimally running stochastic simulation mo...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...
Large scale stochastic linear programs are typically solved using a combination of mathematical prog...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
The problem of selecting the best among several alternatives in a stochastic context has been the ob...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
In this dissertation, we present novel sampling-based algorithms for solving two-stage stochastic pr...
Determining whether a solution is of high quality (optimal or near optimal) is a fundamental questio...
This thesis focuses on a class of information collection problems in stochastic optimisation. Algori...
Selecting a subset of the best solutions among large-scale problems is an important area of research...
We investigate the quality of solutions obtained from sample-average approximations to two-stage sto...
In this dissertation, we focus on developing sampling-based algorithms for solving stochastic linear...
textMany problems in business, engineering and science involve uncertainties but optimization of su...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
This article investigates a budget allocation problem for optimally running stochastic simulation mo...
Monte Carlo sampling-based methods are frequently used in stochastic programming when exact solution...
Large scale stochastic linear programs are typically solved using a combination of mathematical prog...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
The problem of selecting the best among several alternatives in a stochastic context has been the ob...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
In this dissertation, we present novel sampling-based algorithms for solving two-stage stochastic pr...
Determining whether a solution is of high quality (optimal or near optimal) is a fundamental questio...