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Towards a Possibility-Theoretic Approach to Uncertainty in Medical Data Interpretation for Text Generation

机译:寻求一种可能的理论方法来确定文本的医学数据解释的不确定性

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Many real-world applications that reason about events obtained from raw data must deal with the problem of temporal uncertainty, which arises due to error or inaccuracy in data. Uncertainty also compromises reasoning where relationships between events need to be inferred. This paper discusses an approach to dealing with uncertainty in temporal and causal relations using Possibility Theory, focusing on a family of medical decision support systems that aim to generate textual summaries from raw patient data in a Neonatal Intensive Care Unit. We describe a framework to capture temporal uncertainty and to express it in generated texts by mean of linguistic modifiers. These modifiers have been chosen based on a human experiment testing the association between subjective certainty about a proposition and the participants' way of verbalising it.
机译:推理从原始数据获得的事件的许多现实应用程序必须处理由于数据的错误或不准确而引起的时间不确定性问题。不确定性还折衷了需要推断事件之间关系的推理。本文讨论了一种使用可能性理论处理时间和因果关系不确定性的方法,重点介绍了一系列旨在从新生儿重症监护室中的原始患者数据生成文本摘要的医疗决策支持系统。我们描述了一个捕获时间不确定性并通过语言修饰语在生成的文本中表达它的框架。这些修饰语是根据一项人类实验进行选择的,该实验测试了关于某个主观的主观确定性与参与者表达该陈述的方式之间的关联。

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