Research on probabilistic language multi-attribute group decision-making method based on correlation coefficient and improved entropy

Junwei Li, Mengmeng Lian, Yong Jin, Miaomiao Xia, Huaibin Hou
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Abstract

To address the issue of unknown expert and attribute weights in the comprehensive assessment of hospitals, as well as the potential challenges posed by distance measures, this paper presents a probabilistic language multi-attribute group decision-making (MAGDM) approach that utilizes correlation coefficients and improved entropy. First, the correlation function, called the probabilistic linguistic correlation coefficient, is introduced into the probabilistic linguistic term set(PLTS) to measure the consistency among experts, so as to obtain the weights of experts. Next, based on Shannon entropy, an improved probabilistic linguistic entropy is proposed to measure the uncertainty of PLTS considering the number of alternatives and information quantity. Then, based on the correlation coefficient and improved entropy, the attribute weights are obtained. In addition, in order to overcome the counter-intuitive problem of existing distance measurement, this paper proposes a probabilistic language distance measurement method based on the Bray-Curtis distance to measure the differences between PLTSs. On this basis, by applying the technique for order preference by similarity to ideal solution (TOPSIS) method and using PLTSs to construct the MAGDM method, the ranking of alternative schemes is generated. Finally, the improved MAGDM method is applied to an example of the comprehensive evaluation of the smart medical hospitals. The results show that compared with the existing methods, this method can determine the weight information more reasonably, and the decision-making results are not counter-intuitive, so it can evaluate the hospital more objectively.
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基于相关系数和改进熵的概率语言多属性群体决策方法研究
为了解决医院综合评估中专家和属性权重未知的问题,以及距离度量带来的潜在挑战,本文提出了一种利用相关系数和改进熵的概率语言多属性群体决策(MAGDM)方法。首先,在概率语言术语集(PLTS)中引入相关函数,即概率语言相关系数,来衡量专家之间的一致性,从而得到专家的权重。接着,在香农熵的基础上,考虑到备选方案的数量和信息量,提出了一种改进的概率语言熵来衡量 PLTS 的不确定性。然后,根据相关系数和改进的熵值,得到属性权重。此外,为了克服现有距离测量中的反直觉问题,本文提出了一种基于布雷-柯蒂斯距离的概率语言距离测量方法,用于测量 PLTS 之间的差异。在此基础上,应用理想解相似度排序偏好技术(TOPSIS)方法,利用 PLTS 构建 MAGDM 方法,生成备选方案的排序。最后,将改进后的 MAGDM 方法应用于智慧医疗医院的综合评价实例中。结果表明,与现有方法相比,该方法能更合理地确定权重信息,决策结果不违背直觉,能更客观地评价医院。
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