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A novel entropy-based weighted attribute selection in enhanced multicriteria decision-making using fuzzy TOPSIS model for hesitant fuzzy rough environment

机译:一种使用模糊Topsis模型的增强多铁型决策中基于熵的加权属性选择,用于犹豫不决的模糊粗糙环境

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The existing approaches of multicriteria decision-making (MCDM) process might yield unreliable and questionable results. The notable challenges of MCDM approaches are rank reversal paradox and uncertainty. The prime inspiration for researchers is the MCDM for hesitant fuzzy sets (HFSs). In some scenarios, the decision-makers could not choose one from numerous values while expressing their preferences. HFS which is the extension of fuzzy sets (FS) is found to be helpful in solving such decision-making (DM) problems. The DM process is revolutionized with the commencement of powerful and efficient tools of data representation for expressing vagueness and uncertainty in data sets as FSs (both generalized and hesitant ones). This paper copes with one such novel approach that involves entropy-based attribute weighting, followed by an evaluation of approximate sets in the fuzzy rough framework. Correlation of the input alternatives in respect of evaluation criteria and the output class is evaluated. With the fuzzy technique for ordered preference by similarity to ideal solutions (FTOPSIS), the generated correlation matrix is utilized for calculating the degree of closeness ( δ documentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} egin{document}$$ delta $$end{document} ) of the output classes to the input alternatives. This paper made a novel contribution of performance indicator centered on FTOPSIS for the hesitant fuzzy rough domain. The proposed method’s efficiency is established through comprehensive and systematic experimentation on datasets utilized by researchers globally. The proposed algorithms prove its ability to handle datasets that involve human-like hesitant thinking in the MCDM system by contrasting with the existing ones.
机译:多铁路决策(MCDM)进程的现有方法可能会产生不可靠且可疑的结果。 MCDM方法的显着挑战是排名逆转悖论和不确定性。研究人员的主要灵感是犹豫不决的模糊套(HFSS)的MCDM。在某些情况下,决策者不能在表达他们的偏好时从众多值中选择一个。发现是模糊集(FS)延伸的HFS有助于解决这种决策(DM)问题。 DM过程彻底改变了强大的有效的数据表示工具,用于表达数据集的模糊性和不确定性作为FSS(普遍和犹豫不决的数据集)。本文用一种这样的新方法,涉及基于熵的属性加权,然后在模糊粗略框架中评估近似集合。评估输入替代方案的相关性和输出类的相关性。利用模糊技术通过相似性与理想解决方案(FTOPSIS)的顺序优先考虑,利用所生成的相关矩阵来计算闭合度(Δ documentClass [12pt] {minimal} usepackage {ammath} usepackage {isysym} usepackage {amsfonts} usepackage {amssymb} usepackage {amsbsy} usepackage {mathrsfs} usepackage {supmeez} setLength { oddsideDemargin} { - 69pt} begin {document} $$$$ delta $$ need {document})输出类到输入替代方案。本文为犹豫不决的模糊粗大领域为中心的绩效指标作出了新的贡献。通过全球研究人员使用的数据集的全面和系统的实验建立了所提出的方法的效率。所提出的算法证明了能力处理在MCDM系统中涉及人类犹豫思维的数据集,通过与现有的方式对比。

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