In this thesis, we first show that the performance of ranking and selection (R&S) procedures in steady-state simulations depends highly on the quality of the variance estimates that are used. We study the performance of R&S procedures using three variance estimators --- overlapping area, overlapping Cramer--von Mises, and overlapping modified jackknifed Durbin--Watson estimators --- that show better long-run performance than other estimators previously used in conjunction with R&S procedures for steady-state simulations. We devote additional study to the development of the new overlapping modified jackknifed Durbin--Watson estimator and demonstrate some of its useful properties. Next, we consider the problem of finding the best simulate...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
We consider an expected-value ranking and selection problem where all k solutions' simulation output...
We consider the problem of ranking and selection with multiple-objectives in the presence of uncerta...
In this thesis, we first present a variance estimation technique based on the standardized time seri...
This dissertation deals with the various statistical guarantees delivered by ranking-and-selection (...
The studies of using computer simulation to address stochastic systems selection problem prevail cur...
Ranking and selection procedures (R&S) were developed by statisticians to search for the best am...
This thesis consists of two parts. The first part reviews a Variable Search, a variable selection pr...
Ranking and selection (R&S) procedures are widely used for selecting the best among a set of candida...
Simulation optimization is concerned with identifying the best design for large, complex and stochas...
CITATION: Yoon, M. & Bekker, J. 2017. Single- and multi-objective ranking and selection procedures i...
With the rise in the application of evolution strategies for simulation optimization, a better under...
In simulation, time averages are important for estimating equilibrium parameters. In particular, we ...
[[abstract]]In this paper, we address the problem of finding the simulated system with the best (max...
In this dissertation, we study two problems. In the first part, we consider the two-stage methods fo...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
We consider an expected-value ranking and selection problem where all k solutions' simulation output...
We consider the problem of ranking and selection with multiple-objectives in the presence of uncerta...
In this thesis, we first present a variance estimation technique based on the standardized time seri...
This dissertation deals with the various statistical guarantees delivered by ranking-and-selection (...
The studies of using computer simulation to address stochastic systems selection problem prevail cur...
Ranking and selection procedures (R&S) were developed by statisticians to search for the best am...
This thesis consists of two parts. The first part reviews a Variable Search, a variable selection pr...
Ranking and selection (R&S) procedures are widely used for selecting the best among a set of candida...
Simulation optimization is concerned with identifying the best design for large, complex and stochas...
CITATION: Yoon, M. & Bekker, J. 2017. Single- and multi-objective ranking and selection procedures i...
With the rise in the application of evolution strategies for simulation optimization, a better under...
In simulation, time averages are important for estimating equilibrium parameters. In particular, we ...
[[abstract]]In this paper, we address the problem of finding the simulated system with the best (max...
In this dissertation, we study two problems. In the first part, we consider the two-stage methods fo...
In this paper we address the problem of finding the simulated system with the best (maximum or minim...
We consider an expected-value ranking and selection problem where all k solutions' simulation output...
We consider the problem of ranking and selection with multiple-objectives in the presence of uncerta...