R. O. Ostapenko, I. A. Hodashinsky, Yu. A. Shurygin
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引用次数: 0
Abstract
The paper describes three stages in the construction of a fuzzy classifier. The first refers to the formation of fuzzy rules, the second stage is feature selection, and the third stage is optimization of membership functions parameters. The influence of clustering methods on the efficiency of the formed fuzzy classifier rules was estimated by three different fitness functions. These functions were total variance, the Davies–Bouldin index, and the Calinski–Harabasz index. The grasshopper optimization algorithm was binarized using S- and V-shaped transformation functions for feature selection. The constructed classifiers have been tested on datasets from the KEEL repository.
摘要 本文介绍了构建模糊分类器的三个阶段。第一阶段是模糊规则的形成,第二阶段是特征选择,第三阶段是成员函数参数的优化。聚类方法对已形成的模糊分类规则效率的影响是通过三种不同的拟合函数来估算的。这些函数分别是总方差、戴维斯-博尔丁指数和卡林斯基-哈拉巴什指数。使用 S 型和 V 型变换函数对蚱蜢优化算法进行二值化,以选择特征。所构建的分类器已在 KEEL 数据库的数据集上进行了测试。
期刊介绍:
Automatic Documentation and Mathematical Linguistics is an international peer reviewed journal that covers all aspects of automation of information processes and systems, as well as algorithms and methods for automatic language analysis. Emphasis is on the practical applications of new technologies and techniques for information analysis and processing.