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Distinguishing Antonyms and Synonyms in a Pattern-based Neural Network

机译:在基于模式的神经网络中区分反义词和同义词

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Distinguishing between antonyms and synonyms is a key task to achieve high performance in NLP systems. While they are notoriously difficult to distinguish by distributional co-occurrence models, pattern-based methods have proven effective to differentiate between the relations. In this paper, we present a novel neural network model AntSynNET that exploits lexico-syntactic patterns from syntactic parse trees. In addition to the lexical and syntactic information, we successfully integrate the distance between the related words along the syntactic path as a new pattern feature. The results from classification experiments show that AntSynNET improves the performance over prior pattern-based methods.
机译:区分反义词和同义词是在NLP系统中实现高性能的关键任务。尽管众所周知,它们很难通过分布共现模型来区分,但基于模式的方法已被证明有效地区分了这些关系。在本文中,我们提出了一种新的神经网络模型AntSynNET,该模型利用了语法分析树中的词汇-句法模式。除了词法和句法信息外,我们还成功地沿句法路径整合了相关单词之间的距离,并将其作为一种新的模式特征。分类实验的结果表明,AntSynNET与以前的基于模式的方法相比,提高了性能。

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