We consider optimizing a stochastic system, given only a simulation model that is parameterized by continuous decision variables. The model is assumed to produce unbiased point estimates of the system performance measure(s), which must be expected values. The performance measures may appear in the objective function and/or in the constraints. We develop a family of retrospective-optimization (RO) algorithms based on a sequence of sample-path approximations to the original problem with increasing sample sizes. Each approximation problem is obtained by substituting point estimators for each performance measure and using common random numbers over all values of the decision variables. We assume that these approximation problems can be determin...
We present a general framework for applying simulation to optimize the behavior of discrete event sy...
Systems whose performance can only be evaluated through expensive numerical or physical simulation a...
We extend the idea of model-based algorithms for deterministic optimization to simulation optimizati...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
Optimizing a stochastic system with a set of discrete design variables x is an important and difficu...
Stochastic Gradient Descent (SGD) is a widely-used iterative algorithm for solving stochastic optimi...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
Simulation based optimisation or simulation optimisation is an important field in stochastic optimis...
The stochastic root-finding problem (SRFP) is that of solving a non-linear system of equations using...
We present a review of methods for optimizing stochastic systems using simulation. The focus is on g...
Optimization of discrete event systems conventionally uses simulation as a black-box oracle to estim...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
Continuous-variable simulation optimization problems are those optimization problems where the objec...
It is frequently the case that deterministic optimization models could be made more practical by exp...
This paper summarizes information about a method, called sample-path optimization, for optimizing pe...
We present a general framework for applying simulation to optimize the behavior of discrete event sy...
Systems whose performance can only be evaluated through expensive numerical or physical simulation a...
We extend the idea of model-based algorithms for deterministic optimization to simulation optimizati...
We consider optimizing a stochastic system, given only a simulation model that is parameterized by c...
Optimizing a stochastic system with a set of discrete design variables x is an important and difficu...
Stochastic Gradient Descent (SGD) is a widely-used iterative algorithm for solving stochastic optimi...
Approaches like finite differences with common random numbers, infinitesimal perturbation analysis, ...
Simulation based optimisation or simulation optimisation is an important field in stochastic optimis...
The stochastic root-finding problem (SRFP) is that of solving a non-linear system of equations using...
We present a review of methods for optimizing stochastic systems using simulation. The focus is on g...
Optimization of discrete event systems conventionally uses simulation as a black-box oracle to estim...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
Continuous-variable simulation optimization problems are those optimization problems where the objec...
It is frequently the case that deterministic optimization models could be made more practical by exp...
This paper summarizes information about a method, called sample-path optimization, for optimizing pe...
We present a general framework for applying simulation to optimize the behavior of discrete event sy...
Systems whose performance can only be evaluated through expensive numerical or physical simulation a...
We extend the idea of model-based algorithms for deterministic optimization to simulation optimizati...