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Aggregation of unbalanced fuzzy linguistic information in decision problems based on Type-1 OWA operator

机译:基于Type-1 OWA算子的决策问题中不平衡模糊语言信息的聚合

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Information aggregation is a key task in any group decision making problem. In the fuzzy linguistic context, when comparing two alternatives, it is usually assumed that assessments belong to linguistic term sets of symmetrically distributed labels with respect to a central label that stands for the indifference state. However, in practice there are many situations whose nature recommends their modelling using not symmetric linguistic term sets, and therefore formal approaches to deal with sets of unbalanced linguistic labels in decision making are necessary to be appropriately developed. In literature, the linguistic hierarchy methodology has proved successful when modelling unbalanced linguistic labels using an ordinal approach in their representation. However, linguistic labels can be modelled using a cardinal approach, i.e. as fuzzy subsets represented by membership functions. Obviously, the linguistic hierarchy methodology is not appropriate in these cases. In this contribution, a Type-1 OWA approach is proposed to deal with the aggregation step of the resolution process of a group decision making problem with unbalanced linguistic information modelled using a cardinal approach. The Type-1 OWA operator aggregates fuzzy sets and uses whole membership functions to compute the aggregated output fuzzy sets. The application of the Type-1 OWA approach to an example where the linguistic hierarchy approach was applied before will provide us an opportunity to compare the aggregated results obtained in both cases. Following the defuzzification of the Type-1 OWA aggregated values, it can be concluded that both methodologies are equivalent. The use of the Type-1 OWA approach in this decision making context does not require building linguistic hierarchies while at the same time allows a fully exploitation of the fuzzy nature of linguistic information.
机译:信息聚合是任何团队决策问题中的关键任务。在模糊语言环境中,当比较两个备选方案时,通常假设评估相对于代表无差异状态的中心标签属于对称分布标签的语言术语集。但是,实际上,在许多情况下,自然界会建议使用不对称的语言术语集进行建模,因此有必要适当开发在决策过程中处理不平衡的语言标签集的形式化方法。在文献中,当使用序数表示法对不平衡的语言标签进行建模时,语言层次方法已被证明是成功的。但是,语言标签可以使用基本方法建模,即作为由隶属函数表示的模糊子集。显然,在这些情况下,语言层次结构方法不合适。在此贡献中,提出了一种Type-1 OWA方法来处理使用基数方法建模的不平衡语言信息的群体决策问题解决过程的聚合步骤。 Type-1 OWA运算符聚合模糊集并使用整体隶属函数来计算聚合的输出模糊集。将Type-1 OWA方法应用于之前已应用语言层次方法的示例,这将为我们提供机会比较这两种情况下获得的汇总结果。对Type-1 OWA汇总值进行去模糊处理后,可以得出结论,两种方法是等效的。在此决策环境中使用Type-1 OWA方法不需要建立语言层次结构,同时可以充分利用语言信息的模糊性质。

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