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Personalized individual semantics in computing with words for supporting linguistic group decision making. An application on consensus reaching

机译:在计算中使用单词来个性化个人语义,以支持语言小组决策。达成共识的申请

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摘要

In group decision making (GDM) dealing with Computing with Words (CW) has been highlighted the importance of the statement, words mean different things for different people, because of its influence in the final decision. Different proposals that either grouping such different meanings (uncertainty) to provide one representation for all people or use multi-granular linguistic term sets with the semantics of each granularity, have been developed and applied in the specialized literature. Despite these models are quite useful they do not model individually yet the different meanings of each person when he/she elicits linguistic information. Hence, in this paper a personalized individual semantics (PIS) model is proposed to personalize individual semantics by means of an interval numerical scale and the 2-tuple linguistic model. Specifically, a consistency-driven optimization-based model to obtain and represent the PIS is introduced. A new CW framework based on the 2-tuple linguistic model is then defined, such a CW framework allows us to deal with PIS to facilitate ON keeping the idea that words mean different things to different people. In order to justify the feasibility and validity of the PIS model, it is applied to solve linguistic GDM problems with a consensus reaching process. (C) 2016 Elsevier B.V. All rights reserved.
机译:在处理单词计算(CW)的小组决策中(GDM)强调了声明的重要性,因为单词在最终决策中的影响,单词对不同的人意味着不同的事物。将不同含义(不确定性)分组以为所有人提供一种表示或使用具有每种粒度语义的多粒度语言术语集的不同建议已被开发并应用于专门文献中。尽管这些模型非常有用,但是它们并没有单独建模每个人在获得语言信息时的不同含义。因此,本文提出了一种个性化的个体语义(PIS)模型,通过区间数值尺度和二元组语言模型来个性化个体的语义。具体来说,介绍了一种基于一致性驱动的基于优化的模型来获取和表示PIS。然后定义了一个基于2元组语言模型的新CW框架,这种CW框架使我们能够处理PIS,以方便继续保持单词对不同人具有不同含义的想法。为了证明PIS模型的可行性和有效性,将其用于通过达成共识的过程来解决语言GDM问题。 (C)2016 Elsevier B.V.保留所有权利。

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