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Extracting Conceptual Relationships and Inducing Concept Lattices from Unstructured Text

机译:从非结构化文本提取概念性关系和诱导概念格子

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Concept and relationship extraction from unstructured text data plays a key role in meaning aware computing paradigms, which make computers intelligent by helping them learn, interpret, and synthesis information. These concepts and relationships leverage knowledge in the form of ontological structures, which is the backbone of semantic web. This paper proposes a framework that extracts concepts and relationships from unstructured text data and then learns lattices that connect concepts and relationships. The proposed framework uses an off-the-shelf tool for identifying common concepts from a plain text corpus and then implements machine learning algorithms for classifying common relations that connect those concepts. Formal concept analysis is then used for generating concept lattices, which is a proven and principled method of creating formal ontologies that aid machines to learn things. A rigorous and structured experimental evaluation of the proposed method on real-world datasets has been conducted. The results show that the newly proposed framework outperforms state-of-the-art approaches in concept extraction and lattice generation.
机译:来自非结构化文本数据的概念和关系提取在意义意味着意味着意识到计算范例中,这使得通过帮助他们学习,解释和综合信息来使计算机智能化。这些概念和关系利用本体结构形式的知识,这是语义网的骨干。本文提出了一种提取非结构化文本数据的概念和关系的框架,然后了解连接概念和关系的格子。所提出的框架使用了一个现成的工具,用于识别纯文本语料库中的常见概念,然后实现机器学习算法,用于对连接这些概念的公共关系进行分类。然后将正式的概念分析用于生成概念格子,这是一种经过验证和原则的方法,可以创建辅助机器学习事物的正式本体。已经进行了对现实世界数据集的建议方法的严格和结构化的实验评估。结果表明,新提出的框架优于概念提取和格子生成中最先进的方法。

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