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An inclusion/exclusion fuzzy hyperbox classifier

机译:包含/排除模糊超框分类器

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摘要

In this study we consider the classification (supervised learning) problem in [01]~n that utilizes fuzzy sets as pattern classes. Each class is described by one or more fuzzy hyperbox defined by their corresponding minimum- and maximum vertices and the hyperbox membership function. Two types of hyperboxes are created: inclusion hyperboxes that contain input patterns belonging to the same class, and exclusion hyperboxes that contain patterns belonging to two or more classes, thus representing contentious areas of the pattern space. With these two types of hyperboxes each class fuzzy set is represented as a union of inclusion hyperboxes of the same class minus a union of exclusion hyperboxes. The subtraction of sets provides for efficient representation of complex topologies of pattern classes without resorting to a large number of small hyperboxes to describe each class. The proposed fuzzy hyperbox classification is compared to the original Min-Max Neural Network and the Gene ral Fuzzy Min-Max Neural Network and the origins of the improved performance of the proposed classification are identified. These are verified on a standard data set from the Machine Learning Repository.
机译:在这项研究中,我们考虑[01]〜n中的分类(监督学习)问题,该问题利用模糊集作为模式类。每一类由一个或多个模糊超框描述,该模糊超框由其相应的最小和最大顶点以及超框隶属度函数定义。创建了两种类型的超级框:包含属于同一类的输入模式的包含超级框,以及包含属于两个或多个类的模式的排除超框,从而表示了模式空间的争议区域。对于这两种类型的超框,每个类模糊集都表示为同一类的包含超框的并集减去排除超框的并集。集的减法提供了模式类的复杂拓扑的有效表示,而无需借助大量的小型超框来描述每个类。将提出的模糊超框分类与原始的最小-最大神经网络和通用模糊最小-最大神经网络进行比较,并确定改进的分类性能的根源。这些已通过机器学习存储库中的标准数据集进行了验证。

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