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An evidential-reasoning based model for probabilistic inference with uncertain data acquired from different data sources

机译:不同数据源获取的不确定数据的概率推理的基于证据推理模型

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This research aims to develop a new model for identifying asthma control steps in the framework of the Evidential Reasoning (ER) rule and to address the uncertainty issue related to prior distributions shown in datasets routinely generated from medical practices. The ER rule is applied to combine multiple pieces of evidence in a recursive fashion, with each piece of evidence acquired from an observable variable and represented as a probability distribution on hypothesis space. The proposed model has desirable flexibility in dealing with multiple pieces of evidence acquired from different data sources where the prior distributions of asthma control steps can be different.
机译:本研究旨在开发一种新的模型,用于识别证据推理(ER)规则的框架中的哮喘控制步骤,并解决与经医学惯例的数据集中所示的现有分布相关的不确定性问题。 AR规则应用于以递归方式组合多个证据,每条证据来自可观察变量,并表示为假设空间的概率分布。所提出的模型具有理想的灵活性,用于处理多个从不同数据源获取的多件证据,其中哮喘控制步骤的现有分布可以不同。

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