Generalized assignment problem (GAP) considers finding minimum cost assignment of n tasks to m agents provided each task should be assigned to one agent only. In this study, a new Genetic Algorithm (GA) with some new methods has been proposed to solve GAPs. The agent-based crossover is based on the concept of dominant gene in genotype science and increases the fertility rate of the feasible solutions. The solutions are classified as infeasible, feasible and mature with reference to their conditions. The new local searches provide not only feasibility in high diversity but high profitability for the solutions. A solution is not given up through maturation-based replacement until it reaches its best. The computational results show that the ag...
This paper deals with the task-scheduling and worker-allocation problem, in which each skillful work...
This paper examines a real-world application of genetic algorithms - solving the United States Navy\...
In this chapter, we propose a novel algorithm that uses Genetic algorithm with group theory for init...
The Job Allocation/Assignment Problem has been a pivot of research for numerous well-known researche...
Many central examinations are performed nationwide in Turkey. These examinations are held simultaneo...
Abstract: In this paper an attempt has been made to solve the “Assignment problem ” through genetic ...
We present in this paper an application of the Constructive Genetic Algorithm (CGA) to the Generaliz...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
The paper provides an improved evolutionary strategy (ES) of genetic algorithm (GA) on the basis of ...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...
Abstract — Genetic Algorithms are the population based search and optimization technique that mimic ...
This paper includes a flexible method for solving the travelling salesman problem using genetic algo...
Genetic Algorithms (GAs) are commonly used today worldwide. Various observations have been theorized...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
Introduction. Practical tasks (location of service points, creation of microcircuits, scheduling, et...
This paper deals with the task-scheduling and worker-allocation problem, in which each skillful work...
This paper examines a real-world application of genetic algorithms - solving the United States Navy\...
In this chapter, we propose a novel algorithm that uses Genetic algorithm with group theory for init...
The Job Allocation/Assignment Problem has been a pivot of research for numerous well-known researche...
Many central examinations are performed nationwide in Turkey. These examinations are held simultaneo...
Abstract: In this paper an attempt has been made to solve the “Assignment problem ” through genetic ...
We present in this paper an application of the Constructive Genetic Algorithm (CGA) to the Generaliz...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
The paper provides an improved evolutionary strategy (ES) of genetic algorithm (GA) on the basis of ...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...
Abstract — Genetic Algorithms are the population based search and optimization technique that mimic ...
This paper includes a flexible method for solving the travelling salesman problem using genetic algo...
Genetic Algorithms (GAs) are commonly used today worldwide. Various observations have been theorized...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
Introduction. Practical tasks (location of service points, creation of microcircuits, scheduling, et...
This paper deals with the task-scheduling and worker-allocation problem, in which each skillful work...
This paper examines a real-world application of genetic algorithms - solving the United States Navy\...
In this chapter, we propose a novel algorithm that uses Genetic algorithm with group theory for init...