An Approach to Determine Best Cutting-points in Group Decision Making Problems with Information Granules

Lijie Han, M. Song, W. Pedrycz
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引用次数: 1

Abstract

In this paper, we propose a new approach to solve linguistic group decision making (GDM) problems through defining different linguistic terms for each expert and optimizing those terms. Information granules are often designed as the framework of linguistic terms and to vividly describe the approach, intervals are selected to express linguistic terms as large, medium, and small in the paper. Analytic Hierarchy Process (AHP) is set as the basic model and abstracted as linguistic reciprocal matrices. The abstraction process is carefully designed considering two strategies: each expert owns same linguistic terms (same distribution of cutting-points in an interval) and each expert owns different linguistic terms. As comparison, three methods of cutting-points allocation for the two strategies are realized with a synthetic example: optimizing allocation, uniform allocation and random allocation. The results coincide with theoretical analysis: each expert owns different linguistic terms reach the highest consensus.
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具有信息颗粒的群体决策问题中最佳切割点的确定方法
本文提出了一种解决语言群体决策问题的新方法,即为每个专家定义不同的语言术语并对这些术语进行优化。信息颗粒通常被设计为语言术语的框架,为了生动地描述这种方法,本文选择了大、中、小的间隔来表示语言术语。以层次分析法(AHP)为基本模型,抽象为语言互反矩阵。抽象过程考虑了两种策略:每个专家拥有相同的语言术语(切点在区间内的相同分布)和每个专家拥有不同的语言术语。作为对比,通过一个综合实例,实现了两种策略的切点分配方法:优化分配、均匀分配和随机分配。结果与理论分析相吻合:各专家拥有的不同语言术语达到了最高的共识。
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