The increased complexity of manufacturing systems makes the acquisition of the system performance estimate a black-box procedure (e.g., simulation tools). The efficiency of most black-box optimization algorithms is affected significantly by initial designs (populations). In most population initializers, points are spread out to explore the entire domain, e.g., space-filling designs. Some population initializers also consider exploitation procedures to speed up the optimization process. However, they are either application-dependent or require an additional budget. This article proposes a generic method to generate, without an additional budget, several good solutions in the initial design. The aim of the method is to optimize the quantile o...
This paper derives a procedure for efficiently allocating the number of units in multi-level designs...
Thesis (Ph.D.)--University of Washington, 2015An important area in statistics is that of experimenta...
This paper presents a Markov sampling-based framework, called Asymptotic Bayesian Optimization, for ...
The increased complexity of manufacturing systems makes the acquisition of the system performance es...
Many problems of design and operation in science and engineering can be formulated as optimization o...
We consider a class of the subset selection problem in ranking and selection. The objective is to id...
The problem of finding optimal designs in complex optimisation problems has often been solved, to a ...
The methodology based on computing budget allocation is an effective tool in solving the problem of ...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...
For expensive computational simulations, such as the finite element method (FEM) or computational fl...
We consider the problem of allocating a given simulation budget among a set of design alternatives i...
An experimental design is a formula or algorithm that specifies how resources are to be utilized thr...
Classical statistics and machine learning posit that data are passively collected, usually assumed t...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulatio...
This article addresses the issue of kriging-based optimization of stochastic simulators. Many of the...
This paper derives a procedure for efficiently allocating the number of units in multi-level designs...
Thesis (Ph.D.)--University of Washington, 2015An important area in statistics is that of experimenta...
This paper presents a Markov sampling-based framework, called Asymptotic Bayesian Optimization, for ...
The increased complexity of manufacturing systems makes the acquisition of the system performance es...
Many problems of design and operation in science and engineering can be formulated as optimization o...
We consider a class of the subset selection problem in ranking and selection. The objective is to id...
The problem of finding optimal designs in complex optimisation problems has often been solved, to a ...
The methodology based on computing budget allocation is an effective tool in solving the problem of ...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...
For expensive computational simulations, such as the finite element method (FEM) or computational fl...
We consider the problem of allocating a given simulation budget among a set of design alternatives i...
An experimental design is a formula or algorithm that specifies how resources are to be utilized thr...
Classical statistics and machine learning posit that data are passively collected, usually assumed t...
Approximate solutions for discrete stochastic optimization problems are often obtained via simulatio...
This article addresses the issue of kriging-based optimization of stochastic simulators. Many of the...
This paper derives a procedure for efficiently allocating the number of units in multi-level designs...
Thesis (Ph.D.)--University of Washington, 2015An important area in statistics is that of experimenta...
This paper presents a Markov sampling-based framework, called Asymptotic Bayesian Optimization, for ...