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Ontology-Based Ambiguity Resolution of Manufacturing Text for Formal Rule Extraction

机译:基于本体的制造文本歧义解析用于规则抽取

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摘要

Manufacturing companies maintain manufacturing knowledge primarily as unstructured text. To facilitate formal use of such knowledge, previous efforts have utilized natural language processing (NLP) to classify manufacturing documents or extract manufacturing concepts/relations. However, extracting more complex knowledge, such as manufacturing rules, has been evasive due to the lack of methods to resolve ambiguities. Specifically, standard NLP techniques do not address domain-specific ambiguities that are due to manufacturing-specific meanings implicit in the text. To address this important gap, we propose an ambiguity resolution method that utilizes domain ontology as the mechanism to incorporate the domain context. We demonstrate its feasibility by extending our previously implemented manufacturing rule extraction framework. The effectiveness of the method is demonstrated by resolving all the domain-specific ambiguities in the dataset and an improvement in correct detection of rules to 70% (increased by about 13%). We expect that this work will contribute to the adoption of semantics-based technology in manufacturing field, by enabling the extraction of precise formal knowledge from text.
机译:制造公司主要以非结构化文本的形式维护制造知识。为了促进这种知识的正式使用,先前的努力已经利用自然语言处理(NLP)对制造文档进行分类或提取制造概念/关系。然而,由于缺乏解决歧义的方法,因此提取诸如制造规则之类的更复杂的知识一直是不明智的。具体来说,标准的NLP技术无法解决由于文本中隐含的特定于制造的含义而导致的特定于域的歧义。为了解决这个重要的差距,我们提出了一种歧义解决方法,该方法利用领域本体作为合并领域上下文的机制。我们通过扩展我们先前实施的制造规则提取框架来证明其可行性。该方法的有效性通过解决数据集中所有特定于域的歧义以及将规则的正确检测提高到70%(提高了约13%)来证明。我们希望这项工作能够通过从文本中提取精确的形式知识,为在制造领域采用基于语义的技术做出贡献。

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