Identifying semantic and syntactic relations from text documents

Chien D. C. Ta, Tuoi Phan Thi
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引用次数: 4

Abstract

Semantic and syntactic relations play an important role of applications in recent years, especially on Semantic Web, Information Retrieval, Information Extraction, and Question Answering. Semantic and syntactic relations content main ideas in the sentences or paragraphs. This paper presents our proposed algorithms for identifying semantic and syntactic relations between objects and their properties in order to enrich a domain specific ontology, namely Computing Domain Ontology, which is used in Information extraction system. We combine the methodologies of Natural Language Processing with Machine Learning in these proposed algorithms in order to extract the explicit and implicit relations. We exploit these relations from distinct resources, such as WordNet, Wikipedia and text documents of ACM Digital Libraries. We also use Natural Language Processing tools, such as OpenNLP, Stanford Lexical Dependency Parser in order to analyze and parse sentences. A random sample among 245 categories of ACM Categories is used to evaluate. Results generated show that our proposed approach achieves high precision.
从文本文档中识别语义和句法关系
近年来,语义和句法关系在语义网、信息检索、信息抽取和问答等应用中发挥着重要作用。语义和句法关系表达句子或段落的主要思想。本文提出了一种识别对象及其属性之间语义和句法关系的算法,以丰富用于信息抽取系统的特定领域本体,即计算领域本体。我们在这些算法中结合了自然语言处理和机器学习的方法,以提取显式和隐式关系。我们从不同的资源中挖掘这些关系,如WordNet、维基百科和ACM数字图书馆的文本文档。我们还使用自然语言处理工具,如OpenNLP, Stanford Lexical Dependency Parser来分析和解析句子。从245个ACM类别中随机抽取样本进行评估。结果表明,该方法具有较高的精度。
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