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Werdy: Recognition and Disambiguation of Verbs and Verb Phrases with Syntactic and Semantic Pruning

机译:Werdy:通过句法和语义修剪对动词和动词短语进行识别和歧义消除

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Word-sense recognition and disambiguation (WERD) is the task of identifying word phrases and their senses in natural language text. Though it is well understood how to disambiguate noun phrases, this task is much less studied for verbs and verbal phrases. We present Werdy, a framework for WERD with particular focus on verbs and verbal phrases. Our framework first identifies multi-word expressions based on the syntactic structure of the sentence; this allows us to recognize both contiguous and non-contiguous phrases. We then generate a list of candidate senses for each word or phrase, using novel syntactic and semantic pruning techniques. We also construct and leverage a new resource of pairs of senses for verbs and their object arguments. Finally, we feed the so-obtained candidate senses into standard word-sense disambiguation (WSD) methods, and boost their precision and recall. Our experiments indicate that Werdy significantly increases the performance of existing WSD methods.
机译:词义识别和消歧(WERD)是在自然语言文本中识别单词短语及其含义的任务。尽管人们对如何消除名词短语的歧义已广为人知,但对于动词和口头短语来说,这项任务的研究则少得多。我们介绍了Werdy,这是WERD的框架,特别侧重于动词和语言短语。我们的框架首先根据句子的句法结构识别多词表达;这使我们能够识别连续短语和非连续短语。然后,我们使用新颖的句法和语义修剪技术为每个单词或短语生成候选感官列表。我们还为动词及其宾语自变量构造和利用了一对新的感官资源。最后,我们将如此获得的候选感官输入标准的词义消歧(WSD)方法中,并提高了它们的准确性和召回率。我们的实验表明,Werdy大大提高了现有WSD方法的性能。

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