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Incomplete and Fuzzy Conceptual Graphs to Automatically Index Medical Reports

机译:不完整和模糊的概念图以自动索引医疗报告

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Most of Information Retrieval (IR) systems are still based on bag of word paradigm. This is a strong limitation if one needs high precision answers. For example, in restricted domain, like medicine, user builds short and precise query, like “Show me chest CT images with emphysema.”, and expects from the system precise answers. In such a case, the use of natural language processing to model document content is the only way to improve IR precision. This paper presents a model for text IR that index documents with Fuzzy Conceptual Graphs (FCG). Building automatically a complete and relevant conceptual structure is known to be a difficult task. To overcome this problem and keeping automatic graph building, we promote the use of incomplete FCG. We show how to deal with this incompleteness by using confidence. This confidence is attached to concepts and conceptual relations. As we use FCG as index, the matching process is based on a fuzzy graph matching. Finally, our experiments show that this outperforms classical word based indexing.
机译:信息检索的大多数检索(IR)系统仍然基于Word Paradigm的袋子。如果需要高精度的答案,这是一个很大的限制。例如,在限制域名,如医学,用户构建短而精确的查询,如“向我展示带有肺气肿的胸部CT图像”。并且期望从系统精确答案。在这种情况下,使用自然语言处理来模拟文档内容是提高IR精度的唯一方法。本文介绍了文本IR的模型,即索引文档,具有模糊概念图(FCG)。建立自动建立完整的,相关的概念结构是一项艰巨的任务。为了克服这个问题并保持自动图建设,我们宣传使用不完整的FCG。我们展示如何利用信心处理这种不完整性。这种信心与概念和概念关系附加。当我们使用FCG作为索引时,匹配过程基于模糊的图形匹配。最后,我们的实验表明,这一优于基于古典词汇的索引。

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