一种鲁棒相对影响值提取算法(arrival)

S. Hegazy, C. Buckingham
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引用次数: 4

摘要

本文提出了一种求解树形结构中节点权重的方法。这棵树代表了用于量化与心理健康问题相关的风险的专业知识,它被纳入一个名为GRiST的基于网络的决策支持系统。该算法的目的是在树中找到一组相对节点权重,帮助GRiST模拟心理健康专家给出的临床风险判断。结果表明,从几百个病例(GRiST为200个)的临床判断中可以计算出非常大量的节点(GRiST为数千个)的权重。通过确保专家不需要提供他们自己对整个树的节点权重的估计,这大大减少了专家的启发任务。这种方法有可能在类似的知识工程领域中减少启发负荷,在这些领域中,兄弟节点的相对权重是参数空间的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Algorithm for Robust Relative Influence Values Elicitation (ARRIVE)
This paper proposes an approach to solving node weightings in a tree structure. The tree represents expertise used to quantify risks associated with mental-health problems and it is incorporated within a Web-based decision support system called GRiST. The aim of the algorithm is to find the set of relative node weightings in the tree that helps GRiST simulate the clinical risk judgements given by mental-health experts. The results show that a very large number of nodes (several thousand for GRiST) can have their weights calculated from the clinical judgements associated with a few hundred cases (200 for GRiST). This greatly reduces the experts' elicitation tasks by ensuring they do not need to provide their own estimation of node weights throughout the tree. The approach has the potential for reducing elicitation load in similar knowledge-engineering domains where relative weightings of node siblings are part of the parameter space.
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