The paper studies the optimal sequential sampling policy of the partitioned random search (PRS) and its approximation. The PRS is a recently proposed approach for function optimization. It takes explicitly into consideration computation time or cost, assuming that there exist both a cost for each function evaluation and a finite total computation time constraint. It is also motivated at improving efficiency of the widely used crude random search. In particular, the PRS considers partitioning the search region of an objective function into K subregions and employing an independent and identically distributed random sampling scheme for each of K subregions. A sampling policy decides when to terminate the sampling process or which subregion to...
Random search algorithms are often used to solve discrete optimization-via-simulation (DOvS) problem...
The optimally refined proportional sampling strategy has been recommended as a better alternative to...
In the first part of this dissertation, we consider two problems in sequential decision making. The ...
We consider a combination of state space partitioning and random search methods for solving determin...
Abstract—Consider the following sequential sampling problem: at each time, a choice must be made bet...
The Nested Partition (NP) method is efficient in large-scale optimization problems. The most promisin...
Random search is a core component of many well known simulation optimization algorithms such as nest...
We develop a sequential sampling procedure for solving a class of stochastic programs. A sequence of...
A simple modification is introduced to a recently developed global optimization algorithm, the Adapt...
The goal of this article is to provide a general framework for locally convergent random-search algo...
We develop a sequential sampling procedure for a class of stochastic programs. We assume that a sequ...
A theoretical technique for the minimization of a function by a random search is presented. The sear...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
In this paper, we propose a simple global optimisation algorithm inspired by Pareto’s principle. Thi...
A random search method, Optimized Step-Size Random Search (OSSRS), for function minimization is prop...
Random search algorithms are often used to solve discrete optimization-via-simulation (DOvS) problem...
The optimally refined proportional sampling strategy has been recommended as a better alternative to...
In the first part of this dissertation, we consider two problems in sequential decision making. The ...
We consider a combination of state space partitioning and random search methods for solving determin...
Abstract—Consider the following sequential sampling problem: at each time, a choice must be made bet...
The Nested Partition (NP) method is efficient in large-scale optimization problems. The most promisin...
Random search is a core component of many well known simulation optimization algorithms such as nest...
We develop a sequential sampling procedure for solving a class of stochastic programs. A sequence of...
A simple modification is introduced to a recently developed global optimization algorithm, the Adapt...
The goal of this article is to provide a general framework for locally convergent random-search algo...
We develop a sequential sampling procedure for a class of stochastic programs. We assume that a sequ...
A theoretical technique for the minimization of a function by a random search is presented. The sear...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
In this paper, we propose a simple global optimisation algorithm inspired by Pareto’s principle. Thi...
A random search method, Optimized Step-Size Random Search (OSSRS), for function minimization is prop...
Random search algorithms are often used to solve discrete optimization-via-simulation (DOvS) problem...
The optimally refined proportional sampling strategy has been recommended as a better alternative to...
In the first part of this dissertation, we consider two problems in sequential decision making. The ...