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Automatic stuff relation extraction from scientific documents for natural product ontology construction

机译:从科学文档中自动进行物料关系提取,用于天然产物本体构建

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To extract Part-Whole relations, especially the stuff relation, from unstructured textual data is the challenging work This paper presents how to automatically extract the stuff relation from technical documents on the Web for supporting chemical industries. The research extracts the stuff relation without applying POS (Part-of-Speech) annotation. There are three problems of extracting the stuff relation: a) the identification of stuff relation without POS annotation problem, b) the chemical-formula-embedded name entity determination problem and c) the genus-species name entity determination problem. We propose using Naive Bayes to learn the stuff relation. The results from our proposed methodology are 87% precision and 61% recall.
机译:从非结构化文本数据中提取整体关系,尤其是物料关系是一项艰巨的工作。本文介绍了如何从Web的技术文档中自动提取物料关系,以支持化学工业。该研究在不应用POS(词性)注释的情况下提取了填充关系。提取材料关系的三个问题:a)没有POS注释问题的材料关系的识别; b)嵌入化学式的名称实体确定问题;以及c)属种名称实体确定问题。我们建议使用朴素贝叶斯来学习材料之间的关系。我们提出的方法论的结果是87%的精度和61%的召回率。

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