4.6 Article

Improvement of the approximations and accuracy measure of a rough set using somewhere dense sets

期刊

SOFT COMPUTING
卷 25, 期 23, 页码 14449-14460

出版社

SPRINGER
DOI: 10.1007/s00500-021-06358-0

关键词

Somewhere dense set; Lower and upper approximations; Accuracy measure; Interior and closure operators

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The paper introduces the concept of somewhere dense sets to improve approximations in rough set theory, defining new concepts such as SD-lower and SD-upper approximations. It compares the new method with previous ones and shows that the current method is more accurate through examples.
Rough set theory is a non-statistical approach to handle uncertainty and uncertain knowledge. It is characterized by two methods called classification (lower and upper approximations) and accuracy measure. The closeness of notions and results in topology and rough set theory motivates researchers to explore the topological aspects and their applications in rough set theory. To contribute to this area, this paper applies a topological concept called somewhere dense sets to improve the approximations and accuracy measure in rough set theory. We firstly discuss further topological properties of somewhere dense and cs-dense sets and give explicitly formulations to calculate S-interior and S-closure operators. Then, we utilize these two sets to define new concepts in rough set context such as SD-lower and SD-upper approximations, SD-boundary region, and SD-accuracy measure of a subset. We establish the fundamental properties of these concepts as well as show their relationships with the previous ones. In the end, we compare the current method of approximations with the previous ones and provide two examples to elucidate that the current method is more accurate.

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