Time-series bidirectional adjustable N-soft expert MABAC method and its application for multi-attribute group decision-chool of Economics and Management, University of Science amaking

IF 2.6 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY Physica Scripta Pub Date : 2024-09-10 DOI:10.1088/1402-4896/ad75ca
Yanan Chen and Xiaoguang Zhou
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Abstract

In hybrid models of soft expert sets, experts express only agreed or disagreed opinions about existing grades. This paper proposes a time-series bidirectional adjustable N-soft expert set model to address the shortcomings of existing models that cannot adjust existing grades to a more reasonable state or describe decision problems involving different times. Firstly, this model can explain the experts’ uncertain opinions and make positive or negative adjustments about existing grades. Secondly, the model contains information about time, describes dynamic multi-attribute group decision-making problems and explores objects’ changes and developments over time. And some related operations and propositions are derived. In addition, a new method called the bidirectional adjustable N-soft expert MABAC (multi-attributive border approximation area comparison) is proposed. On the one hand, the proposed method uses deviation maximizing and exponential decay methods to determine the time weights, ensuring the reliability of the time weights. On the other hand, it ranks objects based on their distances from an approximate boundary region, limiting the unconditional compensation among attribute values. Finally, this paper presents an example to verify its effectiveness and reliability by results analysis, sensitivity analysis, and comparison analysis.
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时间序列双向可调N-软专家MABAC方法及其在多属性群体决策中的应用-科学大学经济与管理学院
在软专家集的混合模型中,专家只对现有等级表达同意或不同意的意见。针对现有模型无法将现有等级调整到更合理的状态或无法描述涉及不同时间的决策问题的缺点,本文提出了一种时间序列双向可调 N 软专家集模型。首先,该模型可以解释专家的不确定意见,并对现有等级进行正向或负向调整。其次,该模型包含时间信息,可以描述动态的多属性群体决策问题,探索对象随时间的变化和发展。并得出了一些相关的运算和命题。此外,还提出了一种名为双向可调 N 软专家 MABAC(多属性边界近似区域比较)的新方法。一方面,提出的方法使用偏差最大化和指数衰减法来确定时间权重,确保了时间权重的可靠性。另一方面,它根据对象与近似边界区域的距离进行排序,限制了属性值之间的无条件补偿。最后,本文介绍了一个实例,通过结果分析、敏感性分析和对比分析来验证其有效性和可靠性。
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来源期刊
Physica Scripta
Physica Scripta 物理-物理:综合
CiteScore
3.70
自引率
3.40%
发文量
782
审稿时长
4.5 months
期刊介绍: Physica Scripta is an international journal for original research in any branch of experimental and theoretical physics. Articles will be considered in any of the following topics, and interdisciplinary topics involving physics are also welcomed: -Atomic, molecular and optical physics- Plasma physics- Condensed matter physics- Mathematical physics- Astrophysics- High energy physics- Nuclear physics- Nonlinear physics. The journal aims to increase the visibility and accessibility of research to the wider physical sciences community. Articles on topics of broad interest are encouraged and submissions in more specialist fields should endeavour to include reference to the wider context of their research in the introduction.
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