Enhanced group decision-making through an intelligent algorithmic approach for multiple-attribute credit evaluation with 2-tuple linguistic neutrosophic sets

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Cui Mao
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Abstract

With the development of the internet economy, e-commerce has rapidly risen, and a large number of small and micro e-commerce enterprises have emerged. However, these enterprises have low financial information transparency, small scale, and high development uncertainty. Therefore, combining the characteristics of the internet economy, it is of great significance to dynamically evaluate credit risk. This not only helps to enhance the quality and rationality of credit risk evaluation results, but also helps to improve financing efficiency and reduce financing risks. The credit evaluation for small and micro enterprises is a multiple-attribute group decision-making (MAGDM). Recently, the TODIM (an acronym in Portuguese of interactive and multicriteria decision making) and TOPSIS method has been inaugurated to cope with MAGDM issues. The 2-tuple linguistic neutrosophic sets (2TLNSs) are inaugurated as an effective tool for characterizing uncertain information during the credit evaluation for small and micro enterprises. In this paper, the 2-tuple linguistic neutrosophic TODIM-TOPSIS (2TLNN-TODIM-TOPSIS) method is inaugurated to solve the MAGDM under 2TLNSs. Finally, a numerical case study for credit evaluation for small and micro enterprises is inaugurated to confirm the proposed method. The prime contribution of this paper are outlined: (1) The information entropy based on score function and accuracy function are built on the 2TLNSs to obtain weight information; (2) an integrated the 2-tuple linguistic neutrosophic TODIM-TOPSIS (2TLNN-TODIM-TOPSIS) method is established to cope with MAGDM; (3) An illustrative example for credit evaluation for small and micro enterprises has accomplished to illustrate the 2TLNN-TODIM-TOPSIS; (4) some comparative analysis are employed to verify the 2TLNN-TODIM-TOPSIS method.
通过使用 2 元组语言中性集进行多属性信用评估的智能算法,增强群体决策能力
随着互联网经济的发展,电子商务迅速崛起,涌现出一大批小微电商企业。然而,这些企业财务信息透明度低、规模小、发展不确定性大。因此,结合互联网经济的特点,动态评估信用风险具有重要意义。这不仅有利于提高信用风险评价结果的质量和合理性,也有利于提高融资效率,降低融资风险。小微企业信用评价是一种多属性群体决策(MAGDM)。最近,葡萄牙语中的 TODIM(交互式多标准决策的首字母缩写)和 TOPSIS 方法被用来应对 MAGDM 问题。2 元组语言中性集(2TLNS)作为一种有效工具,在小型和微型企业信贷评估过程中用于描述不确定信息。本文采用 2 元组语言中性集 TODIM-TOPSIS (2TLNN-TODIM-TOPSIS)方法来求解 2TLNSs 下的 MAGDM。最后,通过对小型和微型企业信用评估的数值案例研究,证实了所提出的方法。本文的主要贡献概述如下(1) 在 2TLNSs 上建立了基于得分函数和准确度函数的信息熵,以获取权重信息;(2) 建立了一种集成的 2 元组语言中性 TODIM-TOPSIS (2TLNN-TODIM-TOPSIS)方法来应对 MAGDM;(3) 以小微企业信用评价为例,对 2TLNN-TODIM-TOPSIS 方法进行了说明; (4) 通过对比分析,对 2TLNN-TODIM-TOPSIS 方法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
22
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