Genetic fuzzy systems: Taxonomy, current research trends and prospects

被引:401
作者
Herrera F. [1 ]
机构
[1] Department of Computer Science and Artificial Intelligence, University of Granada
关键词
Computational Intelligence; Data mining; Evolutionary algorithms; Fuzzy rule based systems; Genetic algorithms; Genetic fuzzy systems; Machine learning;
D O I
10.1007/s12065-007-0001-5
中图分类号
学科分类号
摘要
The use of genetic algorithms for designing fuzzy systems provides them with the learning and adaptation capabilities and is called genetic fuzzy systems (GFSs). This topic has attracted considerable attention in the Computation Intelligence community in the last few years. This paper gives an overview of the field of GFSs, being organized in the following four parts: (a) a taxonomy proposal focused on the fuzzy system components involved in the genetic learning process; (b) a quick snapshot of the GFSs status paying attention to the pioneer GFSs contributions, showing the GFSs visibility at ISI Web of Science including the most cited papers and pointing out the milestones covered by the books and the special issues in the topic; (c) the current research lines together with a discussion on critical considerations of the recent developments; and (d) some potential future research directions. © Springer-Verlag 2008.
引用
收藏
页码:27 / 46
页数:19
相关论文
共 110 条
[1]  
Alba E., Tomassini M., Parallelism and evolutionary algorithms, IEEE Trans Evol Comput, 6, pp. 443-462, (2002)
[2]  
Alcala R., Casillas J., Cordon O., Herrera F., Building fuzzy graphs: Features and taxonomy of learning non-grid-oriented fuzzy rule-based systems, Int J Intell Fuzzy Syst, 11, pp. 99-119, (2001)
[3]  
Alcala R., Gacto M.J., Herrera F., Alcala-Fdez J., A multi-objective genetic algorithm for tuning and rule selection to obtain accurate and compact linguistic fuzzy rule-based systems, Int J Uncertain Fuzziness Knowl Based Syst, 15, 5, pp. 521-537, (2007)
[4]  
Alcala R., Alcala-Fdez R., Herrera F., Otero J., Genetic learning of accurate and compact fuzzy rule based systems based on the 2-Tuples linguistic representation, Int J Approx Reason, 44, pp. 45-64, (2007)
[5]  
Alcala R., Alcala-Fdez J., Gacto M.J., Herrera F., A multi-objective genetic algorithm for tuning and rule selection to obtain accurate and compact linguistic fuzzy rule-based systems, Int J Uncertain Fuzziness Knowl Based Syst, (2008)
[6]  
Alcala-Fdez J., Herrera F., Marquez F., Peregrin A., Increasing fuzzy rules cooperation based on evolutionary adaptive inference systems, Int J Intell Syst, 22, 9, pp. 1035-1064, (2007)
[7]  
Alcala-Fdez J., Sanchez L., Garcia S., del Jesus M.J., Ventura S., Garrell J.M., Otero J., Romero C., Bacardit J., Rivas V.M., Fernandez J.C., Herrera F., KEEL: A software tool to assess evolutionary algorithms for data mining problems, Soft Comput, (2008)
[8]  
Au W.-H., Chan K.C.C., Wong A.K.C., A fuzzy approach to partitioning continuous attributes for classification, IEEE Trans Knowl Data Eng, 18, 5, pp. 715-719, (2006)
[9]  
Berlanga F.J., del Jesus M.J., Gonzalez P., Herrera F., Mesonero M., Multiobjective evolutionary induction of subgroup discovery fuzzy rules: A case study in marketing, pp. 337-349, (2006)
[10]  
Bernado-Mansilla E., Garrell-Guiu J.M., Accuracy-Based Learning Classifier Systems: Models, Analysis and Applications to Classification Tasks, Evol Comput, 11, 3, pp. 209-238, (2003)