Abstract: Meta-heuristics are an effective paradigm for solving large-scale combinatorial optimization problems. However, the development of such algorithms is often very time-consuming as they have to be designed for a concrete problem class with little or no opportunity for reuse. In this paper, we present a generic software framework that is able to handle different types of combinatorial optimization problems by coordinating so-called OptLets that work on a set of solutions to a problem. The framework provides a high degree of self-organization and offers a generic and concise interface to reduce the adaptation effort for new problems as well as to integrate with external systems. The performance of the OptLets framework is demonstrated...
While meta-heuristics are effective for solving large-scale combinatorial optimization problems, the...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
While meta-heuristics are effective for solving large-scale combinatorial optimization problems, the...
We propose a new generic framework for solving combinatorial optimization problems that can be model...
A metaheuristic is an intelligent, iterative process that guides a search and can be applied towards...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to o...
Meta-heuristic algorithm development through a novel intergrated problem solving environment for so...
The determination of true optimum solutions of combinatorial optimization problems is seldomly requi...
The determination of true optimum solutions of combinatorial optimization problems is seldomly requi...
The determination of true optimum solutions of combinatorial optimization problems is seldomly requi...
In recent years, there have been many studies in which tailored heuristics and meta-heuristics have ...
This open access book demonstrates all the steps required to design heuristic algorithms for difficu...
In theoretical computer science, combinatorial optimization problems are about finding an optimal it...
Optimization problems are ubiquitous nowadays. Many times, their corresponding computational models ...
While meta-heuristics are effective for solving large-scale combinatorial optimization problems, the...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
While meta-heuristics are effective for solving large-scale combinatorial optimization problems, the...
We propose a new generic framework for solving combinatorial optimization problems that can be model...
A metaheuristic is an intelligent, iterative process that guides a search and can be applied towards...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to o...
Meta-heuristic algorithm development through a novel intergrated problem solving environment for so...
The determination of true optimum solutions of combinatorial optimization problems is seldomly requi...
The determination of true optimum solutions of combinatorial optimization problems is seldomly requi...
The determination of true optimum solutions of combinatorial optimization problems is seldomly requi...
In recent years, there have been many studies in which tailored heuristics and meta-heuristics have ...
This open access book demonstrates all the steps required to design heuristic algorithms for difficu...
In theoretical computer science, combinatorial optimization problems are about finding an optimal it...
Optimization problems are ubiquitous nowadays. Many times, their corresponding computational models ...
While meta-heuristics are effective for solving large-scale combinatorial optimization problems, the...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...
We introduce a metaheuristic framework for combinatorial optimization. Our framework is similar to m...