Fitness Landscapes, Memetic Algorithms, and Greedy Operators for Graph Bipartitioning (2000)
| Venue: | Evolutionary Computation |
| Citations: | 39 - 13 self |
BibTeX
@ARTICLE{Merz00fitnesslandscapes,,
author = {Peter Merz and Bernd Freisleben},
title = {Fitness Landscapes, Memetic Algorithms, and Greedy Operators for Graph Bipartitioning},
journal = {Evolutionary Computation},
year = {2000},
volume = {8},
pages = {61--91}
}
Years of Citing Articles
OpenURL
Abstract
The fitness landscape of the graph bipartitioning problem is investigated by performing a search space analysis for several types of graphs. The analysis shows that the structure of the search space is significantly different for the types of instances studied. Moreover, with increasing epistasis, the amount of gene interactions in the representation of a solution in an evolutionary algorithm, the number of local minima for one type of instance decreases and, thus, the search becomes easier. We suggest that other characteristics besides high epistasis might have greater influence on the hardness of a problem. To understand these characteristics, the notion of a dependency graph describing gene interactions is introduced.







