Induction of Fuzzy Classification Systems Using Evolutionary ACO-Based Algorithms

M. S. Abadeh, J. Habibi, Emad Soroush
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引用次数: 46

Abstract

In this paper we have proposed an evolutionary algorithm to induct fuzzy classification rules. The algorithm uses an ant colony optimization based local searcher to improve the quality of final fuzzy classification system. The proposed algorithm is performed on intrusion detection as a high-dimensional classification problem. Results show that the implemented evolutionary ACO-Based algorithm is capable of producing a reliable fuzzy rule based classifier for intrusion detection
基于进化蚁群算法的模糊分类系统归纳
本文提出了一种引入模糊分类规则的进化算法。该算法使用基于蚁群优化的局部搜索器来提高最终模糊分类系统的质量。该算法将入侵检测作为一个高维分类问题来执行。结果表明,所实现的基于进化蚁群算法能够生成可靠的基于模糊规则的入侵检测分类器
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