We propose an adaptive hyperbox algorithm (AHA), which is an instance of a locally convergent, random search algorithm for solving discrete optimization via simulation problems. Compared to the COMPASS algorithm, AHA is more efficient in high-dimensional problems. By analyzing models of the behavior of COMPASS and AHA, we show why COMPASS slows down significantly as dimension increases, whereas AHA is less affected. Both AHA and COMPASS can be used as the local search algorithm within the Industrial Strength COMPASS framework, which consists of a global search phase, a local search phase, and a final cleanup phase. We compare the performance of AHA to COMPASS within the framework of Industrial Strength COMPASS and as stand-alone algorithms....
We present a hyper-heuristic algorithm for solving combinatorial black-box optimization problems. Th...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Designing and modeling an optimization algorithm with dedicated search is a costly process and it ne...
We propose an adaptive hyperbox algorithm (AHA), which is an instance of a locally convergent, rando...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
In this paper we propose a coordinate search algorithm to solve the optimization-via-simulation prob...
This article proposes a simplistic algorithmic framework, namely hyperSPAM, composed of three search...
Practitioners often need to solve real world problems for which no custom search algorithms exist. I...
Industrial Strength COMPASS (ISC) is a particular implementation of a general framework for optimizi...
This version of the article has been accepted for publication, after peer review (when applicable) a...
Most of the real world problems have dynamic characteristics, where one or more elements of the unde...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
The goal of this article is to provide a general framework for locally convergent random-search algo...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
International audienceThe emergence of high-dimensional data requires the design of new optimization...
We present a hyper-heuristic algorithm for solving combinatorial black-box optimization problems. Th...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Designing and modeling an optimization algorithm with dedicated search is a costly process and it ne...
We propose an adaptive hyperbox algorithm (AHA), which is an instance of a locally convergent, rando...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
In this paper we propose a coordinate search algorithm to solve the optimization-via-simulation prob...
This article proposes a simplistic algorithmic framework, namely hyperSPAM, composed of three search...
Practitioners often need to solve real world problems for which no custom search algorithms exist. I...
Industrial Strength COMPASS (ISC) is a particular implementation of a general framework for optimizi...
This version of the article has been accepted for publication, after peer review (when applicable) a...
Most of the real world problems have dynamic characteristics, where one or more elements of the unde...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
The goal of this article is to provide a general framework for locally convergent random-search algo...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
International audienceThe emergence of high-dimensional data requires the design of new optimization...
We present a hyper-heuristic algorithm for solving combinatorial black-box optimization problems. Th...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Designing and modeling an optimization algorithm with dedicated search is a costly process and it ne...