The optimal table row and column ordering can reveal useful patterns to improve reading and interpretation. Recently, genetic algorithms using standard crossover and mutation operators have been proposed to tackle this problem. In this paper, we carry out an experimental study that adds to this genetic algorithm crossover and mutation operators specially designed to deal with permutations and includes other parameters (initialization, replacement policy, mutation and crossover rates and stopping criteria) not examined in previous works. A proper analysis of the results must take into account all the parameters simultaneously, since the wrong conclusions can be drawn by studying each separately from the others. This is why we propose a frame...
Solving distribution problems have been an alluring topic for some academician. The determination of...
Abstract. Heuristic policies for combinatorial optimisation problems can be found by using Genetic p...
In this paper we describe an efficient approach for multimodal function optimization using genetic a...
The genetic algorithm (GA) is an optimization and search technique based on the principles of geneti...
This paper presents a large and systematic body of data on the relative effectiveness of mutation, c...
Abstract. The aim of this paper is to show the influence of genetic operators such as crossover and ...
Abstract—Sorting unsigned permutations by reversals is an important and difficult problem in combina...
The genetic statistical problem we are going to discuss is quite common in any context related to re...
Genetic algorithms (GAs) represent a method that mimics the process of natural evolution in effort t...
It is well known that a judicious choice of crossover and/or mutation rates is critical to the succe...
Abstract — Genetic algorithm (GA), as an important intelligence computing tool, is a wide research c...
In this paper we present two new crossover operators that make use of macro-order information and ne...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
<p>Algorithm solving process when given two population sizes and three kinds of crossover and mutati...
This thesis examines the performance of genetic algorithm (GA) crossover techniques within two probl...
Solving distribution problems have been an alluring topic for some academician. The determination of...
Abstract. Heuristic policies for combinatorial optimisation problems can be found by using Genetic p...
In this paper we describe an efficient approach for multimodal function optimization using genetic a...
The genetic algorithm (GA) is an optimization and search technique based on the principles of geneti...
This paper presents a large and systematic body of data on the relative effectiveness of mutation, c...
Abstract. The aim of this paper is to show the influence of genetic operators such as crossover and ...
Abstract—Sorting unsigned permutations by reversals is an important and difficult problem in combina...
The genetic statistical problem we are going to discuss is quite common in any context related to re...
Genetic algorithms (GAs) represent a method that mimics the process of natural evolution in effort t...
It is well known that a judicious choice of crossover and/or mutation rates is critical to the succe...
Abstract — Genetic algorithm (GA), as an important intelligence computing tool, is a wide research c...
In this paper we present two new crossover operators that make use of macro-order information and ne...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
<p>Algorithm solving process when given two population sizes and three kinds of crossover and mutati...
This thesis examines the performance of genetic algorithm (GA) crossover techniques within two probl...
Solving distribution problems have been an alluring topic for some academician. The determination of...
Abstract. Heuristic policies for combinatorial optimisation problems can be found by using Genetic p...
In this paper we describe an efficient approach for multimodal function optimization using genetic a...