In granular computing, fuzzy sets can be approximated by granularly representable sets that are as close as possible to the original fuzzy set w.r.t. a given closeness measure. Such sets are called granular approximations. In this article, we introduce the concepts of disjoint and adjacent granules and we examine how the new definitions affect the granular approximations. First, we show that the new concepts are important for binary classification problems since they help to keep decision regions separated (disjoint granules) and at the same time to cover as much as possible of the attribute space (adjacent granules). Later, we consider granular approximations for multi-class classification problems leading to the definition of a multi-class granular approximation. Finally, we show how to efficiently calculate multi-class granular approximations for {\L}ukasiewicz fuzzy connectives. We also provide graphical illustrations for a better understanding of the introduced concepts.
翻译:在颗粒计算中,毛发组可以被尽可能接近原始毛发集的颗粒代表型组群所近似,这些组群被称为颗粒近似值。这些组群被称为颗粒近似值。在本篇文章中,我们引入了脱节和相邻颗粒的概念,并审视了新定义如何影响颗粒近似值。首先,我们显示了新概念对于二进制分类问题的重要性,因为这些概念有助于保持决策区域分离(脱节颗粒),同时尽可能覆盖属性空间(相近颗粒)。随后,我们考虑了多级分类问题的颗粒近似值,从而导致多级颗粒近似值的定义。最后,我们展示了如何高效计算 {L}Kusiewicz fuzzy 连接值的多级颗粒近似值。我们还提供了图形图解,以更好地了解引入的概念。