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Managing classification-based consensus in social network group decision making: An optimization-based approach with minimum information loss

机译:管理社交网络组决策中基于分类的共识:基于优化的方法,最小信息丢失

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摘要

This study proposes a classification-based consensus framework in social network group decision making, which aims to classify alternatives into several ordinal classes from best to worst. In the classification-based consensus framework, a maximum consensus-based optimization model is devised to determine the weight of decision makers by linearly combining three reliable sources: in-degree centrality, consistency and similarity indexes. This is done by maximizing the consensus level among decision makers regarding the collective classification of alternatives. Following this, a minimum information loss-based optimization model is constructed to generate the consensual collective classification of alternatives. It seeks to minimize the information loss between the additive preference relations provided by decision makers and their preference vectors. Particularly, the proposed optimization models are converted into 0-1 mixed linear programming models to easily find their optimal solutions. Finally, a numerical example and a detailed comparison analysis are provided to show the effectiveness of the proposed approach.
机译:本研究提出了社会网络组决策中基于分类的共识框架,旨在将替代品分为几个序数,从最糟糕的最糟糕。在基于分类的共识框架中,设计了最大的基于共识的优化模型,以通过线性结合三个可靠来源来确定决策者的重量:程度的中心,一致性和相似性指标。这是通过最大限度地提高关于替代方案集体分类的决策者之间的共识水平来完成的。在此之后,构建了最小信息丢失的优化模型,以生成替代方案的同意集体分类。它旨在最大限度地减少决策者提供的添加剂偏好关系与其偏好向量之间的信息损失。特别是,所提出的优化模型被转换为0-1混合线性编程模型,以便于探索最佳解决方案。最后,提供了一个数值和详细的比较分析以显示所提出的方法的有效性。

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