4.7 Article

Uncertainty and decision-making with multi-polar interval-valued neutrosophic hypersoft set: A distance, similarity measure and machine learning approach

Journal

ALEXANDRIA ENGINEERING JOURNAL
Volume 84, Issue -, Pages 323-332

Publisher

ELSEVIER
DOI: 10.1016/j.aej.2023.11.001

Keywords

Decision-making; Soft set; Distance measures; Similarity measures; Neutrosophic set; Hypersoft set; m-polar and interval-values

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This article demonstrates the application of hypersoft set in solving decision-making problems with multiple attributes and introduces similarity measures for multipolar interval-valued neutrosophic hypersoft sets (mPIVNHSs). It discusses the practical value of similarity measurements and the use of the K-Nearest Neighbor algorithm in ranking site selection for a new store.
The issue of decision-making (DM) is intricate due to the environment's ambiguous, imprecise, and uncertain nature, particularly when multiple attributes are involved and further subdivided. To address such complex problems, the concept of the hypersoft set has been employed. This article shows how to combine the multi-polar interval-valued neutrosophic set with the hypersoft set. This can help you solve DM problems that have more than one attribute. Additionally, we define similarity measures for multipolar interval-valued neutrosophic hypersoft sets (mPIVNHSs). We discuss the proposed extensions' definitions and mathematical operations and present an algorithm to solve DM problems related to everyday life using the proposed operators under mPIVNHSs. A machine learning method called K-Nearest Neighbor (KNN) is also employed to calculate ranking in the selection of sites for a new store. By utilizing the potential of data point similarity, K-Nearest Neighbors (KNN) and similarity measurements have practical value in daily life. KNN mimics the human propensity to draw from related experiences, resulting in applications like customized suggestions. Parallel to this, similarity metrics statistically evaluate resemblance to support tasks like personalized advice across fields like biology and social networks. Finally, we conclude the present study by comparing it with the existing studies, and future directions are also given.

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