Thesis (Master's)--University of Washington, 2021Black-box optimization is ubiquitous in machine learning, operations research and engineering simulation. Black-box optimization algorithms typically do not assume structural information about the objective function and thus must make use of stochastic information to achieve statistical convergence to a globally optimal solution. One such class of methods is multi-start algorithms which use a probabilistic criteria to: determine when to stop a single run of an iterative optimization algorithm, also called an inner search, when to perform a restart, or outer search, and when to terminate the entire algorithm. Zabinsky, Bulger & Khompatraporn introduced a record-value theoretic multi-start fram...
This book presents the main methodological and theoretical developments in stochastic global optimiz...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
Most state-of-the-art optimization algorithms utilize restart to resample new initial solutions to a...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
This article investigates simulation-based optimization problems with a stochastic objective functio...
Model-based optimization methods are a class of random search methods that are useful for solving gl...
In this article we study stochastic multistart methods for global optimization, which combine local ...
A multitude of heuristic stochastic optimization algorithms have been described in literature to obt...
This dissertation considers several common notions of complexity that arise in large-scale systems o...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
It is frequently the case that deterministic optimization models could be made more practical by exp...
The researchers made significant progress in all of the proposed research areas. The first major tas...
Stochastic search is a key mechanism underlying many metaheuristics. The chapter starts with the pre...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
This book presents the main methodological and theoretical developments in stochastic global optimiz...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
Most state-of-the-art optimization algorithms utilize restart to resample new initial solutions to a...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
This article investigates simulation-based optimization problems with a stochastic objective functio...
Model-based optimization methods are a class of random search methods that are useful for solving gl...
In this article we study stochastic multistart methods for global optimization, which combine local ...
A multitude of heuristic stochastic optimization algorithms have been described in literature to obt...
This dissertation considers several common notions of complexity that arise in large-scale systems o...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
It is frequently the case that deterministic optimization models could be made more practical by exp...
The researchers made significant progress in all of the proposed research areas. The first major tas...
Stochastic search is a key mechanism underlying many metaheuristics. The chapter starts with the pre...
We study a class of random sampling-based algorithms for solving general non-convex, nondifferentiab...
This book presents the main methodological and theoretical developments in stochastic global optimiz...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
Most state-of-the-art optimization algorithms utilize restart to resample new initial solutions to a...