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Fuzzy β-covering based (I, T)-fuzzy rough set models and applications to multi-attribute decision-making

机译:基于模糊β覆盖的(I,T)模糊粗糙集模型及其在多属性决策中的应用

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摘要

Multi-attribute decision-making (MADM) can be regarded as a process of selecting the optimal one from all alternatives. Traditional MADM problems with fuzzy information are mainly focused on a fundamental tool which is a fuzzy binary relation. However some complicated problems cannot be effectively solved by a fuzzy relation. For this reason, in order to solve these issues, we set forth two decision-making methods that are stated in terms of novel and flexible fuzzy rough set models. For the purpose of defining these models we employ a fuzzy implication operator I and a triangular norm T. With these adaptable tools we design four kinds of fuzzy beta-coverings based (I, T)-fuzzy rough set models. The elements that make these models different are the combination of fuzzy beta-neighborhoods that intervene in the definitions of the lower (upper) approximations. Then, we discuss the relationships among these given four types of models. Finally, we propose two novel methodologies to solve MADM problems with evaluation of fuzzy information, which rely on these models. Through the analysis of the ranking results of these two methods, we observe that the optimal selected alternative is the same, which means that these two decision-making methods are reasonable. In addition, by comparing the ranking results of these two methods and the existing traditional methods (WA operator and TOPSIS), we observe that our proposed methods can solve the ranking problems that traditional methods cannot solve, which means that our proposed methods are superior to traditional methods.
机译:多属性决策(MADM)可以看作是从所有替代方案中选择最佳方案的过程。具有模糊信息的传统MADM问题主要集中在基本工具上,即模糊二进制关系。但是,一些复杂的问题不能通过模糊关系有效地解决。因此,为了解决这些问题,我们提出了两种决策方法,分别以新颖和灵活的模糊粗糙集模型表示。为了定义这些模型,我们使用了模糊蕴涵算子I和三角范数T。借助这些可调整的工具,我们设计了基于(I,T)-模糊粗糙集模型的四种模糊β覆盖。使这些模型与众不同的要素是模糊β邻域的组合,它们介入了较低(较高)近似的定义。然后,我们讨论了这四种模型之间的关系。最后,我们提出了两种新颖的方法来解决基于模糊信息评估的MADM问题。通过对这两种方法的排名结果的分析,我们发现最优选择方案是相同的,这意味着这两种决策方法都是合理的。此外,通过比较这两种方法与现有传统方法(WA运算符和TOPSIS)的排名结果,我们发现我们提出的方法可以解决传统方法无法解决的排名问题,这意味着我们提出的方法优于传统方法。

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