利用环形费曼模糊相似度量进行决策的现代模式识别方法及其实际应用

IF 1.3 4区 数学 Q1 MATHEMATICS Journal of Mathematics Pub Date : 2024-05-07 DOI:10.1155/2024/6503747
Revathy Aruchsamy, Inthumathi Velusamy, Prasantha Bharathi Dhandapani, Suleman Nasiru, Christophe Chesneau
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引用次数: 0

摘要

环费马泰模糊(CFF)集是费马泰模糊(FF)集和区间值费马泰模糊(IVFF)集的进步,它处理的是不确定性问题。CFF 集表示为一个半径从 0 到以关联度(DA)和非关联度(DNA)为圆心的圆。如果有多人参与决策,那么 CFF 集作为 FF 集和 IVFF 集的替代方案,可以将决策值包围在一个圆圈内,而不是取平均值,从而更有效地处理模糊性问题。利用算法,可以通过计算或视觉观察模式。机器学习算法利用模式识别作为识别模式的工具,而相似度量(SM)也是一种有益的模式识别工具,用于对项目进行分类、发现变化并为决策做出未来预测。在这项工作中,我们介绍了 CFF 余弦和骰子相似度量(CFFDMs 和 CFFSMs),并研究了它们的特性。与强调单一数字的传统决策方法不同,所提出的 CFFSM 观察圆形区域的模式,有助于更有效地处理不确定性。我们在 FF 环境中引入了一种创新的决策方法。可用的银行贷款和申请人的资格水平使用其 FF 标准表示为 CFF 集,并被视为贷款模式和客户资格模式。通过测量两种模式之间的 CFFCSM 和 CFFDSM,将贷款分配给申请人。同时,通过测量规格模式和需求模式之间的相似度,向客户推荐笔记本电脑。通过对输入和相似性 CFFN 进行比较分析和图形模拟,确保了所建议模型的正确性和一致性。
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Modern Approach in Pattern Recognition Using Circular Fermatean Fuzzy Similarity Measure for Decision Making with Practical Applications
The circular Fermatean fuzzy (CFF) set is an advancement of the Fermatean fuzzy (FF) set and the interval-valued Fermatean fuzzy (IVFF) set which deals with uncertainty. The CFF set is represented as a circle of radius ranging from 0 to with the center at the degree of association (DA) and degree of nonassociation (DNA). If multiple people are involved in making decisions, the CFF set, as an alternative to the FF and IVFF sets, can deal with ambiguity more effectively by encircling the decision values within a circle rather than taking an average. Using algorithms, a pattern can be observed computationally or visually. Machine learning algorithm utilizes pattern recognition as an instrument for identifying patterns and also similarity measure (SM) is a beneficial pattern recognition tool used to classify items, discover variations, and make future predictions for decision making. In this work, we introduce the CFF cosine and Dice similarity measures (CFFDMs and CFFSMs), and their properties are studied. Unlike traditional approaches of decision making, which emphasize a single number, the proposed CFFSMs observe the pattern over the circular region to help in dealing with uncertainty more effectively. We introduce an innovative decision-making method in the FF setting. Available bank loans and applicants’ eligibility levels are represented as CFF set using their FF criteria and are taken as loan patterns and customer eligibility patterns. The loan is allocated to the applicant by measuring the CFFCSM and CFFDSM between the two patterns. Also, laptops are suggested to the customers by measuring the similarity between specification pattern and requirement pattern. The correctness and consistency of the proposed models are ensured by comparison analysis and graphical simulations of the input and similarity CFFNs.
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来源期刊
Journal of Mathematics
Journal of Mathematics Mathematics-General Mathematics
CiteScore
2.50
自引率
14.30%
发文量
0
期刊介绍: Journal of Mathematics is a broad scope journal that publishes original research articles as well as review articles on all aspects of both pure and applied mathematics. As well as original research, Journal of Mathematics also publishes focused review articles that assess the state of the art, and identify upcoming challenges and promising solutions for the community.
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