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Sparse Representation-Based Intuitionistic Fuzzy Clustering Approach to Find the Group Intra-Relations and Group Leaders for Large-Scale Decision Making

机译:基于稀疏表示的直觉模糊聚类方法,用于大规模决策中的组内关系和组长

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摘要

In this paper, a sparse representation-based intuitionistic fuzzy clustering (SRIFC) approach is presented for solving the large-scale decision making (LSDM) problem. It consists of two algorithms: the sparse representation-based intuitionistic fuzzy clustering-exactly precision algorithm (which is presented for an exactly precision requirement), and the sparse representation-based intuitionistic fuzzy clustering-soft precision and scalable algorithm (which is proposed for soft precision and scalable requirements). In the proposed SRIFC approach, decision makers are clustered into several interest groups according to their interest preferences and relation sparsity of their intuitionistic fuzzy assessment information. The purpose of the presented SRIFC approach is to investigate the group intra-relations among DMs and to detect the group leaders for each interest group during the clustering process. According to the illustrative experiment results, the presented SRIFC approach is an adaptive and the unsupervised clustering method and presents more robust and efficient for LSDM problems.
机译:本文提出了一种基于稀疏表示的直觉模糊聚类(SRIFC)方法来解决大规模决策(LSDM)问题。它由两种算法组成:基于稀疏表示的直觉模糊聚类-精确度算法(针对精确的精度要求而提出)和基于稀疏表示的直觉模糊聚类-软精度和可扩展算法(针对软精度和可扩展性要求)。在提出的SRIFC方法中,决策者根据他们的兴趣偏好和直觉模糊评估信息的关系稀疏性,将其分为几个利益集团。提出的SRIFC方法的目的是调查DM之间的组内关系,并在聚类过程中检测每个兴趣组的组长。根据说明性的实验结果,提出的SRIFC方法是一种自适应和无监督的聚类方法,对于LSDM问题,它具有更强的鲁棒性和效率。

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