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一种面向不确定性决策分析的自适应证据组合方法

An adaptive evidence combination method for decision analysis under uncertainty

Journal of the Operational Research Society · 2021
被引 4
ABS 3

中文导读

提出一种自适应证据组合方法,通过引入调整系数灵活控制冲突证据间的补偿程度,并融入信息可靠性和重要性参数,在车辆识别和在线评论购买决策案例中验证了处理高冲突证据的优势。

Abstract

Due to the imperfection of devices and the individuation of human cognition, the process of data fusion often involves uncertainty. Dempster–Shafer theory defines the basic probability assignments of possible hypotheses and is effective in combining uncertain information from multiple sources. However, the existing evidence combination methods lack the flexibility to achieve compensation between conflicting pieces of evidence. This study aims to propose an adaptive evidence combination method that takes into account the personalized compensation requirements of decision makers in solving problems of conflicting evidence. To achieve this, an adjustment coefficient is added to the basic probability assignment of each hypothesis to control the compensation degrees between conflicting pieces of evidence in a flexible manner. The parameters of information reliability and importance are further incorporated into the model. The algebraic properties of the proposed evidence combination method are described. In addition, we conduct two case studies, one on vehicle recognition based on multiple sensors and one on purchasing decisions based on online reviews. Through the sensitivity analysis of the adjustment coefficient and the comparative analysis with other evidence combination methods, the advantages of the proposed method in dealing with high levels of conflicting evidence are verified.

决策分析不确定性处理证据理论数据融合冲突管理