基于证据链的模糊多属性决策融合推理方法

Jian-min Shen
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摘要

为了学习多属性决策中先前模糊信息的结果分布,提出了一种基于关联证据链(ECs)的融合推理方法。该模型基于多准则线性规划,导出了多个优化ec的概率信念的凸组合。它对查询情况的解决方案具有不同的灵活性,这取决于从历史ec中导出的相似性矩阵。基准心脏诊断数据集的应用结果验证了该方法的有效性和可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ambiguity Multi-attribute Decisions with Evidential Chains-based Fusion Reasoning Method
To learn the distribution of outcomes from previously ambiguity information for multi-attribute decision making, a novel associative Evidential Chains (ECs)-based fusion reasoning method was proposed. The convex combination of probabilistic beliefs from multiple refined ECs were induced by the proposed model based on multiple criteria linear programming. Its solution for the query case has varied flexibility with the similarity matrix derived from the historical ECs. Results of the applications with the benchmark cardiac diagnostic data sets verify that the proposed method is effective and interpretable.
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