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Modulating Membership Grades to Gain Consensus for Fuzzy Set Uncertainty Values in a Clinical Decision Support System

机译:调制隶属等级以获得临床决策支持系统中的模糊设定的达成共识

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This paper deals with a very important issue in any knowledge engineering discipline: the accurate representation and modelling of real life data and its processing by human experts. The work is applied to the GRiST Mental Health Risk Screening Tool for assessing risks associated with mental-health problems. The complexity of risk data and the wide variations in clinicians’ expert opinions make it difficult to elicit representations of uncertainty that are an accurate and meaningful consensus. It requires integrating each expert’s estimation of a continuous distribution of uncertainty across a range of values. This paper describes an algorithm that generates a consensual distribution at the same time as measuring the consistency of inputs. Hence it provides a measure of the confidence in the particular data item’s risk contribution at the input stage and can help give an indication of the quality of subsequent risk predictions.
机译:本文在任何知识工程学科中涉及一个非常重要的问题:真实生活数据的准确代表和建模和人类专家的处理。该工作适用于Grist心理健康风险筛查工具,用于评估与心理健康问题相关的风险。风险数据的复杂性和临床医生专家意见的广泛变化使得难以引出不确定性的表示,这是一种准确和有意义的共识。它需要将每个专家的估计整合在一系列值中持续分布不确定性。本文介绍了一种在测量输入的一致性的同时产生共识分布的算法。因此,它提供了对特定数据项在输入阶段的风险贡献的信心的衡量标准,并有助于提示随后的风险预测的质量。

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