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Filling Missing Paths: Modeling Co-occurrences of Word Pairs and Dependency Paths for Recognizing Lexical Semantic Relations

机译:填充缺失路径:为识别词汇语义关系建模词对和依赖路径的共同发生

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Recognizing lexical semantic relations between word pairs is an important task for many applications of natural language processing. One of the mainstream approaches to this task is to exploit the lexico-syntactic paths connecting two target words, which reflect the semantic relations of word pairs. However, this method requires that the considered words co-occur in a sentence. This requirement is hardly satisfied because of Zipf's law, which states that most content words occur very rarely. In this paper, we propose novel methods with a neural model of P (path|w_1, w_2) to solve this problem. Our proposed model of P(path|w_1, w_2) can be learned in an unsupervised manner and can generalize the cooccurrences of word pairs and dependency paths. This model can be used to augment the path data of word pairs that do not co-occur in the corpus, and extract features capturing relational information from word pairs. Our experimental results demonstrate that our methods improve on previous neural approaches based on dependency paths and successfully solve the focused problem.
机译:识别单词对之间的词汇语义关系是自然语言处理的许多应用的重要任务。此任务的主流方法之一是利用连接两个目标单词的词典语法路径,这反映了单词对的语义关系。然而,这种方法要求被认为的单词共同发生在句子中。由于ZIPF的法律,这一要求几乎不满足,这使得大多数内容词出现很少。在本文中,我们提出了具有神经模型的新方法(路径| W_1,W_2)来解决这个问题。我们所提出的P(路径| W_1,W_2)可以以无监督的方式学习,并且可以概括单词对和依赖路径的共同电流。该模型可用于增强在语料库中不共同发生的词对的路径数据,并提取来自字对对的关系信息的特征。我们的实验结果表明,我们的方法基于依赖路径并成功解决了重点的问题,提高了先前的神经方法。

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