Title
A fuzzy genetic algorithm for automatic orthogonal graph drawing
Abstract
This paper reflects results of research related to developing a new methodology for automatic graph drawing based on applying genetic algorithms. The methodology has permitted the elaboration of a hybrid technique that combines the most popular, classical, topology-shape-metric approach to orthogonal drawings on the grid and a genetic algorithm that is directed, in its evolutionary process, at multicriteria decision making in a fuzzy environment. In the traditional use of the topology-shape-metric approach, a single fixed planar embedding is obtained in the planarization step. Thereafter this embedding is subjected to the orthogonalization and compaction steps. However, this sequence does not guarantee that the fixed planar embedding will generate a final drawing of a good quality. Moreover, every topology-shape-metric step is classified as a NP-hard problem, and choices as well as heuristics used in previous stages have a direct impact on subsequent ones. Taking this into account, the developed hybrid technique generates a greater number of planar embeddings by varying the order of edges' insertion when forming the planar embeddings in planarization step. Thus, the problem is formulated as a permutation-based combinatorial optimization problem. The genetic algorithm is applied at the planarization step of the topology-shape-metric. This allows one to generate the population with the corresponding number of planar embeddings. Each planar embedding obtained in the planarization step is submitted to the orthogonalization and compaction. Their results serve for applying the procedures of multicriteria decision making in a fuzzy environment. Thus, in the evolutionary process, the genetic algorithm is able to select individuals, which provide more harmonious solutions (relatively of the solutions obtained with traditional applying the topology-shape-metric approach) from the point of view of the aesthetic criteria that are usually utilized at the three steps of automatic graph drawing. This is convincingly demonstrated by experimental results given in the paper.
Year
DOI
Venue
2012
10.1016/j.asoc.2011.11.023
Appl. Soft Comput.
Keywords
Field
DocType
planar embeddings,single fixed planar embedding,evolutionary process,fuzzy environment,multicriteria decision,genetic algorithm,fixed planar embedding,hybrid technique,planarization step,fuzzy genetic algorithm,automatic orthogonal graph drawing,topology-shape-metric approach,graph drawing,genetic algorithms,combinatorial optimization
Graph drawing,Population,Mathematical optimization,Embedding,Fuzzy logic,Combinatorial optimization,Heuristics,Artificial intelligence,Orthogonalization,Machine learning,Genetic algorithm,Mathematics
Journal
Volume
Issue
ISSN
12
4
1568-4946
Citations 
PageRank 
References 
5
0.51
14
Authors
5