Kao Han-Ying
Department of Computer and Information Science, National Hualien University of Education, 123 Hua-Hsi Road, Hualien 970, Taiwan, ROC.
Comput Methods Programs Biomed. 2008 Apr;90(1):9-16. doi: 10.1016/j.cmpb.2007.11.009. Epub 2008 Jan 14.
Influence diagrams have been widely used as knowledge bases in medical informatics and many applied domains. In conventional influence diagrams, the numerical models of uncertainty are probability distributions associated with chance nodes and value tables for value nodes. However, when incomplete knowledge or linguistic vagueness is involved in the reasoning systems, the suitability of probability distributions is questioned. This study intends to propose an alternative numerical model for influence diagrams, possibility distributions, which extend influence diagrams into fuzzy influence diagrams. In fuzzy influence diagrams, each chance node and value node is associated with a possibility distribution which expresses the uncertain features of the node. This study also develops a simulation algorithm and a fuzzy programming model for diagnosis and optimal decision in medical settings.
影响图已在医学信息学和许多应用领域中作为知识库被广泛使用。在传统的影响图中,不确定性的数值模型是与机会节点相关联的概率分布以及值节点的值表。然而,当推理系统涉及不完整知识或语言模糊性时,概率分布的适用性就会受到质疑。本研究旨在为影响图提出一种替代数值模型——可能性分布,它将影响图扩展为模糊影响图。在模糊影响图中,每个机会节点和值节点都与一个表示节点不确定特征的可能性分布相关联。本研究还开发了一种模拟算法和一个模糊规划模型,用于医疗环境中的诊断和最优决策。