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Multiple-attribute decision making based on single-valued neutrosophic Schweizer-Sklar prioritized aggregation operator

机译:基于单值中智Schweizer-Sklar优先集合算子的多属性决策

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Single-valued neutrosophic (SVN) sets can successfully describe the uncertainty problems, and Schweizer-Sklar (SS) t-norm (TN) and t-conorm (TCN) can build the information aggregation process more flexible by a parameter. To fully consider the advantages of SVNS and SS operations, in this article, we extend the SS TN and TCN to single-valued neutrosophic numbers (SVNN) and propose the SS operational laws for SVNNs. Then, we merge the prioritized aggregation (PRA) operator with SS operations, and develop the single-valued neutrosophic Schweizer-Sklar prioritized weighted averaging (SVNSSPRWA) operator, single-valued neutrosophic Schweizer-Sklar prioritized ordered weighted averaging (SVNSSPROWA) operator, single-valued neutrosophic Schweizer-Sklar prioritized weighted geometric (SVNSSPRWG) operator, and single-valued neutrosophic Schweizer-Sklar prioritized ordered weighted geometric (SVNSSPROWG) operator. Moreover, we study some useful characteristics of these proposed aggregation operators (AOs) and propose two decision making models to deal with multiple-attribute decision making (MADM) problems under SVN information based on the SVNSSPRWA and SVNSSPRWG operators. Lastly, an illustrative example about talent introduction is given to testify the effectiveness of the developed methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:单值中智(SVN)集可以成功地描述不确定性问题,而Schweizer-Sklar(SS)t范数(TN)和t-conorm(TCN)可以通过参数构建信息聚合过程。为了充分考虑SVNS和SS操作的优势,在本文中,我们将SS TN和TCN扩展到单值中性数(SVNN),并提出了SVNN的SS操作定律。然后,我们将优先聚合(PRA)运算符与SS运算合并,并开发单值中智中性Schweizer-Sklar优先加权平均(SVNSSPRWA)运算符,单值中智中性Schweizer-Sklar优先有序加权平均(SVNSSPROWA)运算符值中智Schweizer-Sklar优先权重几何(SVNSSPRWG)运算符,以及单值中智Schweizer-Sklar优先权重几何有序(SVNSSPROWG)运算符。此外,我们研究了这些提议的聚合算子(AO)的一些有用特性,并基于SVNSSPRWA和SVNSSPRWG算子,提出了两种决策模型来处理SVN信息下的多属性决策(MADM)问题。最后,给出了关于人才引进的说明性例子,以证明所开发方法的有效性。 (C)2018 Elsevier B.V.保留所有权利。

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