In previous research on two-sided matching(TSM)decision,agents’preferences were often given in the form of exact values of ordinal numbers and linguistic phrase term sets.Nowdays,the matching agent cannot perform the...In previous research on two-sided matching(TSM)decision,agents’preferences were often given in the form of exact values of ordinal numbers and linguistic phrase term sets.Nowdays,the matching agent cannot perform the exact evaluation in the TSM situations due to the great fuzziness of human thought and the complexity of reality.Probability hesitant fuzzy sets,however,have grown in popularity due to their advantages in communicating complex information.Therefore,this paper develops a TSM decision-making approach with multi-attribute probability hesitant fuzzy sets and unknown attribute weight information.The agent attribute weight vector should be obtained by using the maximum deviation method and Hamming distance.The probabilistic hesitancy fuzzy information matrix of each agent is then arranged to determine the comprehensive evaluation of two matching agent sets.The agent satisfaction degree is calculated using the technique for order preference by similarity to ideal solution(TOPSIS).Additionally,the multi-object programming technique is used to establish a TSM method with the objective of maximizing the agent satisfaction of two-sided agents,and the matching schemes are then established by solving the built model.The study concludes by providing a real-world supply-demand scenario to illustrate the effectiveness of the proposed method.The proposed method is more flexible than prior research since it expresses evaluation information using probability hesitating fuzzy sets and can be used in scenarios when attribute weight information is unclear.展开更多
在研究多属性群决策问题的领域中,概率犹豫模糊术语集(hesitant probabilistic fuzzy set,HPFS)作为犹豫模糊集的一种扩展,正广受关注。针对目前在概率犹豫模糊语言环境下,考虑用主客观结合的方式来求解权重以及对方案排序的过程中存在...在研究多属性群决策问题的领域中,概率犹豫模糊术语集(hesitant probabilistic fuzzy set,HPFS)作为犹豫模糊集的一种扩展,正广受关注。针对目前在概率犹豫模糊语言环境下,考虑用主客观结合的方式来求解权重以及对方案排序的过程中存在的问题,提出了一种基于前景理论和逼近理想解排序法(technique for order preference by similarity to an ideal solution,TOPSIS)相结合的多属性群决策模型。首先根据已知的主观决策者权重,经过一致性调节运算得到决策者的综合权重;其次利用熵值法构建了属性权重的求解模型;在充分考虑决策者心理行为的前提下,求解出正、负理想解矩阵,并且基于TOPSIS方法实现多个备选方案之间的优劣排序;最后,通过实例验证了该模型的可行性和有效性。展开更多
基金supported by the National Natural Science Foundation in China(Yue Qi,Project No.71861015).
文摘In previous research on two-sided matching(TSM)decision,agents’preferences were often given in the form of exact values of ordinal numbers and linguistic phrase term sets.Nowdays,the matching agent cannot perform the exact evaluation in the TSM situations due to the great fuzziness of human thought and the complexity of reality.Probability hesitant fuzzy sets,however,have grown in popularity due to their advantages in communicating complex information.Therefore,this paper develops a TSM decision-making approach with multi-attribute probability hesitant fuzzy sets and unknown attribute weight information.The agent attribute weight vector should be obtained by using the maximum deviation method and Hamming distance.The probabilistic hesitancy fuzzy information matrix of each agent is then arranged to determine the comprehensive evaluation of two matching agent sets.The agent satisfaction degree is calculated using the technique for order preference by similarity to ideal solution(TOPSIS).Additionally,the multi-object programming technique is used to establish a TSM method with the objective of maximizing the agent satisfaction of two-sided agents,and the matching schemes are then established by solving the built model.The study concludes by providing a real-world supply-demand scenario to illustrate the effectiveness of the proposed method.The proposed method is more flexible than prior research since it expresses evaluation information using probability hesitating fuzzy sets and can be used in scenarios when attribute weight information is unclear.
文摘在研究多属性群决策问题的领域中,概率犹豫模糊术语集(hesitant probabilistic fuzzy set,HPFS)作为犹豫模糊集的一种扩展,正广受关注。针对目前在概率犹豫模糊语言环境下,考虑用主客观结合的方式来求解权重以及对方案排序的过程中存在的问题,提出了一种基于前景理论和逼近理想解排序法(technique for order preference by similarity to an ideal solution,TOPSIS)相结合的多属性群决策模型。首先根据已知的主观决策者权重,经过一致性调节运算得到决策者的综合权重;其次利用熵值法构建了属性权重的求解模型;在充分考虑决策者心理行为的前提下,求解出正、负理想解矩阵,并且基于TOPSIS方法实现多个备选方案之间的优劣排序;最后,通过实例验证了该模型的可行性和有效性。