Volume 23 , Issue 3 , PP: 97-110, 2024 | Cite this article as | XML | Html | PDF | Full Length Article
Faisal Al-Sharqi 1 * , Ashraf Al-Quran 2 , Badria A. Ali Yousif 3 , Abeer T. Faisal 4 , Hamiden Abd El- Wahed Khalifa 5 , Mona Aladil 6 , Abd Elazeem M. Abd Elazeem 7
Doi: https://doi.org/10.54216/IJNS.230309
The incorporation of expert opinions and handling of data uncertainty are addressed by Al-Alkhazaleh through the introduction of a soft expert set. This extension of the soft set framework aims to enhance the analysis and decision-making processes by incorporating expert knowledge. On the other hand, the utilization of single neutrosophic sets (SVNSs) and fuzzy sets (FSs) has been introduced as models to effectively handle uncertain data. In this work, the authors propose a model that combines the essential characteristics of fuzzy sets (FSs) and single neutrosophic sets (SVNSs) within expert systems. Consequently, this model aims to offer decision-makers increased flexibility when interpreting uncertain information, empowering them in the decision-making process. From a scientific point of view, the process of evaluating this high-performance SVNFSES disappears. Therefore, in this paper, we initiated a new approach known as single-valued neutrosophic fuzzy soft expert sets (SVNFSESs) as a new development in a fuzzy soft computing environment. We investigate some fundamental operations on SVNFSESS along with their basic properties. Also, we investigate AND and OR operations between two SVNFSESS as well as several numerical examples to clarify the above fundamental operations. Finally, we have given an aggregation operator (AO) for SVNFSESs to construct a new algorithm to demonstrate the method’s effectiveness in handling some real-life applications.
Neutrosophic sets , neutrosophic soft sets , Single-valued neutrosophic soft sets , expert soft set , optimization , Decision Making.
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