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A new method for probabilistic linguistic multi-attribute group decision making: Application to the selection of financial technologies

机译:一种新方法概率语言多属性组决策:应用于金融技术的选择

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"No technology, no finance'' has been the consensus in banking industry. Under the background of financial technology (Fintech), how to select an appropriate technology company to cooperate for the banks has become a key. The technology company selection can be regarded as a kind of multi-attribute group decision making (MAGDM) problems. The probabilistic linguistic term set (PLTS) is a useful tool to express decision makers' (DMs') evaluations in the technology company selection. This paper develops a new method for MAGDM with PLTSs. Firstly, the possibility degree and range value of PLTSs are defined. Then a possibility degree algorithm is designed for ranking PLTSs. An Euclidean distance measure between PLTSs is presented and extended to probabilistic linguistic matrices. Based on Archimedean t-norm and s-norm, some new operational laws for PLTSs are defined and some desirable properties are discussed. Then, a generalized probabilistic linguistic Hamacher weighted averaging (GPLHWA) operator and a generalized probabilistic linguistic Hamacher ordered weighted averaging (GPLHOWA) operator are developed. Some useful properties for these operators are investigated in detail. Combined with the subjective weights of DMs, the DMs' weights are determined by the adjusted coefficients. Using the GPLHWA operator, the collective decision matrix is obtained by aggregating all the individual decision matrices. By maximizing the total weighted square possibility degree, a multi-objective program is constructed to derive the attribute weights. The ranking order of alternatives is generated by integrating ELECTRE and TOPSIS. Thereby, a new method is put forward for MAGDM with PLTSs. A Fintech example is analyzed to show the effectiveness of the proposed method. The sensitivity analysis and comparative analyses are conducted to illustrate its advantages. (C) 2019 Elsevier B.V. All rights reserved.
机译:“无技术,没有金融”一直是银行业的共识。在金融技术(Fintech)的背景下,如何选择合适的技术公司为银行合作已成为一个关键。技术公司选择可以被视为作为一种多属性组决策制定(MAGDM)问题。概率语言术语集(PLTS)是表达技术公司选择中的决策者(DMS)评估的有用工具。本文开发了一种新方法MAGDM用PLTSS。首先,定义了PLTS的可能性度和范围值。然后,可能性度算法用于排序PLTS。呈现并扩展到概率语言语言矩阵之间的欧几里德距离测量。基于ARCHIMEDEAN T-NORM S-Norm,定义了一些新的PLTS操作规律,并讨论了一些理想的属性。然后,广义概率语言丸丸加权平均(GPLHWA)开发了操作员和广义概率语言丸丸有序加权平均(GPLHowa)操作员。详细研究了这些运营商的一些有用属性。结合DMS的主观权重,DMS的权重由调整的系数决定。使用GPLHWA运算符,通过聚合所有单独的判定矩阵来获得集体判定矩阵。通过最大化总加权方形可能性度,构造多目标程序以导出属性权重。通过集成电极和顶部来产生替代品的排名顺序。因此,用PLTSS向MAGDM提出了一种新方法。分析金融化例证以显示所提出的方法的有效性。进行敏感性分析和比较分析以说明其优点。 (c)2019年Elsevier B.V.保留所有权利。

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