Rough Set Model based on Union Neighborhood

Main Article Content

Priti Madan
Alka Tripathi

Abstract

The rough set idea was presented as an approach to deal with the ambiguity or uncertainty of the data in information systems. The neighborhood (nbd) system is an essential tool for reducing the boundary area and increasing the accuracy of the measurement. The main focus of the present paper is to introduce the new type of union nbds (briefly, -nbds) and to establish their properties. These -nbds are applied to obtain the concept of -lower approximation and -upper approximation, and -accuracy measure. Their properties are proposed. Finally, a medical application to demonstrate the significance of -nbds is presented.

Article Details

How to Cite
1.
Madan P, Tripathi A. Rough Set Model based on Union Neighborhood. J. Int. Acad. Phys. Sci. [Internet]. 2023 Sep. 15 [cited 2024 May 18];27(3):207-23. Available from: https://www.iaps.org.in/journal/index.php/journaliaps/article/view/887
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