A Neutrosophic Normal Cloud and Its Application in Decision-Making

作者: Hong-yu Zhang , Pu Ji , Jian-qiang Wang , Xiao-hong Chen

DOI: 10.1007/S12559-016-9394-8

关键词:

摘要: In this study, a neutrosophic normal cloud (NNC) and several other related concepts, including backward generator, two aggregated operators, an NNC distance measurement, are proposed. Using these we also construct multi-criteria group decision-making approach to single-value environments. the proposed approach, all evaluations provided by decision-makers via generator. The resulting reflects distribution of customer evaluations. An empirical example a comparative study in order illustrate validate approach. results case using data from Tmall.com indicate that could be effectively applied practical problems.

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