意大利语句子的开放式信息提取

Emanuele Damiano, A. Minutolo, M. Esposito
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引用次数: 5

摘要

从文本语料库中提取信息是机器理解和总结科学知识库和更一般知识库中可用的大量文本的第一步。开放信息抽取(OIE)是从海量非结构化数据中抽取海量命题的一种新出现的无监督策略。到目前为止,世界动物卫生组织现有的大多数方法都集中在英语上,最近才有一些针对其他语言的尝试。尽管意大利语是欧洲的主要语言,但据我们所知,目前还没有针对意大利语的OIE进行过重大研究。本文旨在填补这一知识空白,并提出了ItalIE,这是一个意大利OIE系统,旨在从单个子句构成的简单句子中提取n元命题。在输入句子中检测到单个子句,并利用依赖句法分析和意大利语动词类型词典中的语言信息,根据为意大利语定义的七种模式进行分类。根据这些模式,提取最小的子句,并在它们之上,通过适当地添加可选的补语和状语来生成进一步的命题。在240个意大利语简单句的数据集上进行了实验研究,结果表明该系统在确定正确的子句类型和提取连贯命题方面具有良好的有效性。
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Open Information Extraction for Italian Sentences
Extracting information from text corpora is the first step for machines to understand and summarize vast quantities of text that are available in both scientific and more general knowledge repositories. Open Information Extraction (OIE) is a recent unsupervised strategy to extract huge amounts of propositions from massive unstructured data. Most of the existing OIE approaches so far has been focused on English, with only some recent attempts for other languages. Although Italian is a major European language, to the best of our knowledge, no significant research has been conducted in Italian OIE yet. This paper is intended to fill this knowledge gap and presents ItalIE, an Italian OIE system aimed at extracting n-ary propositions from simple sentences made by single clauses. Single clauses are detected in the input sentences and classified with respect to seven patterns defined for the Italian language by exploiting linguistic information from dependency parsing and Italian lexica of verb types. Depending on these patterns, minimal clauses are extracted and, on the top of them, further propositions are generated by opportunely adding optional complements and adverbials. An experimental study is performed on a dataset of 240 simple sentences in Italian, showing a good effectiveness of the system in determining correct clause types and extracting coherent propositions.
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