Liu Xiaohua, Yue Qi, Hu Bin, Tao Yuan
School of Management, Shanghai University of Engineering Science, Shanghai, 201620, China.
Sci Rep. 2025 Jul 2;15(1):22902. doi: 10.1038/s41598-025-00388-6.
In view of the lack of research on graduate students and supervisors matching (GSSM) decision-making, this study proposes a novel many-to-one matching decision-making method for graduate students and supervisors (GSS) considering conformity psychology and graduate students' preferences from a stability-based fairness perspective. First, the many-to-one matching problem for GSS is described. To tackle this problem, linguistic term matrices (LTMs) provided by bilateral subjects are transformed into Pythagorean fuzzy matrices (PFMs). On the one hand, according to the transference relation of graduate students, a conformity coefficient matrix is built. Then a PFM considering conformity psychology is established. Attribute weight vectors adjusted by conformity coefficients are formulated based on comparison information of graduate students and the conformity coefficient matrix. On this basis, a comprehensive PFM of graduate students is constructed. On the other hand, a preference coefficient matrix of graduate students is built by using TODIM (a Portuguese acronym for interactive and multicriteria decision making). And a PFM considering graduate students' preferences is constructed. Attribute weight vectors of supervisors are determined based on attribute comparison information. On this basis, a comprehensive PFM of supervisors is set up. Furthermore, satisfaction matrices of GSS are constructed by using TOPSIS (technique for order preference by similarity to the ideal solution) and grey correlation degrees. A many-to-one GSSM model considering stability-based fairness is established by introducing matching matrix and stable matching matrix. The many-to-one matching model is then transformed into a one-to-one matching model by introducing virtual supervisor subjects; the optimal matching scheme between GSS is obtained by solving the above model. Finally, the feasibility, effectiveness and innovation of the proposed method are verified by an example analysis. The key findings of this study are listed as follows: (1) A new score of Pythagorean fuzzy numbers (PFNs) is proposed. (2) A method for converting linguistic term sets (LTSs) into PFNs is developed. (3) A weight calculation that combines conformity psychology with BWM is improved. (4) A novel method for satisfaction calculation considering conformity psychology and graduate students' preferences is introduced. (5) A GSSM model considering stability-based fairness is built.
鉴于目前对研究生与导师匹配(GSSM)决策的研究较少,本研究从基于稳定性的公平视角出发,考虑从众心理和研究生偏好,提出了一种新颖的研究生与导师(GSS)多对一匹配决策方法。首先,描述了GSS的多对一匹配问题。为解决该问题,将双边主体提供的语言术语矩阵(LTMs)转化为毕达哥拉斯模糊矩阵(PFMs)。一方面,根据研究生的转移关系构建从众系数矩阵,进而建立考虑从众心理的PFM。基于研究生的比较信息和从众系数矩阵,制定由从众系数调整的属性权重向量。在此基础上,构建研究生的综合PFM。另一方面,利用TODIM(交互式多准则决策的葡萄牙语缩写)构建研究生的偏好系数矩阵,并构建考虑研究生偏好的PFM。根据属性比较信息确定导师的属性权重向量,在此基础上建立导师的综合PFM。此外,利用TOPSIS(逼近理想解排序法)和灰色关联度构建GSS的满意度矩阵。通过引入匹配矩阵和稳定匹配矩阵,建立了基于稳定性公平的多对一GSSM模型。然后通过引入虚拟导师主体将多对一匹配模型转化为一对一匹配模型,求解上述模型得到GSS之间的最优匹配方案。最后,通过实例分析验证了所提方法的可行性、有效性和创新性。本研究的主要发现如下:(1)提出了一种新的毕达哥拉斯模糊数(PFNs)得分。(2)开发了一种将语言术语集(LTSs)转换为PFNs的方法。(3)改进了一种将从众心理与BWM相结合的权重计算方法。(4)引入了一种考虑从众心理和研究生偏好的满意度计算新方法。(5)建立了基于稳定性公平的GSSM模型。