A binary logarithm similarity measure with roughness approximation of rough neutrosophic set for covid-19 / Suriana Alias …[et al.]

Alias, Suriana and Mustapha, Norzieha and Md Yasin, Roliza and Abd Rhani, Norarida and Yaso, Muhammad Naim Haikal and Ramlee, Hazlin Shahira (2023) A binary logarithm similarity measure with roughness approximation of rough neutrosophic set for covid-19 / Suriana Alias …[et al.]. Journal of Mathematics and Computing Science, 9 (2): 12. pp. 89-100. ISSN 0128-0767

Abstract

Roughness measures for uncertainty data occur with less consideration since the data involve indeterminacy and inconsistency. The indeterminacy plus inconsistency can be solved by a rough neutrosophic set with roughness approximation. Therefore, a binary logarithm similarity measure for a rough neutrosophic set with roughness approximation was proposed in this research. A rough neutrosophic set was chosen as the uncertainty set theory information, which includes the upper and lower approximation with a boundary set approximation. The objectives of this research are to define a binary logarithm similarity measure for a rough neutrosophic set, to formulate the properties satisfied by the proposed similarity measure, and to develop a decision-making model by using a bina1y logarithm similarity measure for a case study (COVID-19). The roughness approximation was used in the derivation of the binary logarithm similarity measure. The proving result was finalized. Then, the derivation of binary logarithm similarity measures of a rough neutrosophic set was well defined. As a validation process, the similarity properties for identifying the most important priority group for COVID-19 vaccines were used such as age, health state, women, and job types. Following that, the decision-making for identifying the most important priority group for COVID-19 vaccines is presented.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
Alias, Suriana
suria588@uitm.edu.my
Mustapha, Norzieha
norzieha864@uitm.edu.my
Md Yasin, Roliza
roliza927@uitm.edu.my
Abd Rhani, Norarida
norarida@uitm.edu.my
Yaso, Muhammad Naim Haikal
naimhaikal610@gmail.com
Ramlee, Hazlin Shahira
hazlin237@gmail.com
Subjects: Q Science > QA Mathematics > Analysis
Q Science > QA Mathematics > Philosophy > Mathematical logic > Constructive mathematics > Algorithms
Divisions: Universiti Teknologi MARA, Kelantan > Machang Campus > Faculty of Computer and Mathematical Sciences
Journal or Publication Title: Journal of Mathematics and Computing Science
UiTM Journal Collections: UiTM Journal > Journal of Mathematics and Computing Science (JMCS)
ISSN: 0128-0767
Volume: 9
Number: 2
Page Range: pp. 89-100
Keywords: Binary logarithm, COVID-19, Rough neutrosophic set, Similarity measure
Date: 20 January 2023
URI: https://ir.uitm.edu.my/id/eprint/89056
Edit Item
Edit Item

Download

[thumbnail of 89056.pdf] Text
89056.pdf

Download (3MB)

ID Number

89056

Indexing

Statistic

Statistic details