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Evaluating topic model interpretability from a primary care physician perspective

机译:从初级保健医生的角度评估主题模型的可解释性

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摘要

Background and objective: Probabilistic topic models provide an unsupervised method for analyzing unstructured text. These models discover semantically coherent combinations of words (topics) that could be integrated in a clinical automatic summarization system for primary care physicians performing chart review. However, the human interpretability of topics discovered from clinical reports is unknown. Our objective is to assess the coherence of topics and their ability to represent the contents of clinical reports from a primary care physician's point of view.
机译:背景和目的:概率主题模型提供了一种无监督的方法来分析非结构化文本。这些模型发现了可以在临床自动摘要系统中集成的单词(主题)在语义上连贯的组合,以供初级保健医生进行图表审阅。但是,尚不清楚从临床报告中发现的主题的人类可解释性。我们的目标是从初级保健医生的角度评估主题的连贯性及其代表临床报告内容的能力。

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