IEEE Trans Cybern. 2022 Sep;52(9):9722-9735. doi: 10.1109/TCYB.2021.3054742. Epub 2022 Aug 18.
As a combination of fuzzy sets and covering rough sets, fuzzy β covering has attracted much attention in recent years. The fuzzy β neighborhood serves as the basic granulation unit of fuzzy β covering. In this article, a new discernibility measure with respect to the fuzzy β neighborhood is proposed to characterize the distinguishing ability of a fuzzy covering family. To this end, the parameterized fuzzy β neighborhood is introduced to describe the similarity between samples, where the distinguishing ability of a given fuzzy covering family can be evaluated. Some variants of the discernibility measure, such as the joint discernibility measure, conditional discernibility measure, and mutual discernibility measure, are then presented to reflect the change of distinguishing ability caused by different fuzzy covering families. These measures have similar properties as the Shannon entropy. Finally, to deal with knowledge reduction with fuzzy β covering, we formalize a new type of decision table, that is, fuzzy β covering decision tables. The data reduction of fuzzy covering decision tables is addressed from the viewpoint of maintaining the distinguishing ability of a fuzzy covering family, and a forward attribute reduction algorithm is designed to reduce redundant fuzzy coverings. Extensive experiments show that the proposed method can effectively evaluate the uncertainty of different types of datasets and exhibit better performance in attribute reduction compared with some existing algorithms.
作为模糊集和覆盖粗糙集的组合,模糊β覆盖近年来引起了广泛关注。模糊β邻域是模糊β覆盖的基本粒度单元。本文提出了一种新的基于模糊β邻域的可区分性度量方法,用于刻画模糊覆盖族的区分能力。为此,引入参数化模糊β邻域来描述样本之间的相似性,从而可以评估给定模糊覆盖族的区分能力。然后,提出了可区分性度量的一些变体,如联合可区分性度量、条件可区分性度量和相互可区分性度量,以反映不同模糊覆盖族引起的区分能力的变化。这些度量与香农熵具有相似的性质。最后,为了处理模糊β覆盖的知识约简问题,我们形式化了一种新的决策表,即模糊β覆盖决策表。从保持模糊覆盖族区分能力的角度出发,研究了模糊覆盖决策表的数据约简问题,并设计了一种前向属性约简算法来减少冗余的模糊覆盖。大量实验表明,该方法可以有效地评估不同类型数据集的不确定性,并在属性约简方面表现出优于一些现有算法的性能。