Rule-based fuzzy classifier based on quantum ant optimization algorithm
Document Type
Conference Proceeding
Publication Date
11-21-2015
Abstract
Fuzzy rule-based classification systems have been used extensively in data mining. This paper proposes a fuzzy rule-based classification algorithm based on a quantum ant optimization algorithm. A method of generating the hierarchical rules with different granularity hybridization is used to generate the initial rule set. This method can obtain an original rule set with a smaller number of rules. The modified quantum ant optimization algorithm is used to generate the optimal individual. Compared to other similar algorithms, the algorithm proposed in this paper demonstrates higher classification accuracy and a higher convergence rate. The algorithm is proved to be convergent on theory. Some experiments have been conducted on the algorithm, and the results proved that the algorithm is feasible.
Publication Title
Journal of Intelligent and Fuzzy Systems
First Page Number
2365
Last Page Number
2371
DOI
10.3233/IFS-151935
Recommended Citation
Wu, Jue; Yang, Lei; Li, Tianrui; Zhang, Changjiang; and Li, Zhihui, "Rule-based fuzzy classifier based on quantum ant optimization algorithm" (2015). Kean Publications. 1827.
https://digitalcommons.kean.edu/keanpublications/1827