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Visual Disambiguation of Prepositional Phrase Attachments: Multimodal Machine Learning for Syntactic Analysis Correction

机译:介词短语附件的视觉歧义消除:用于语法分析校正的多模式机器学习

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Prepositional phrase attachments are known to be an important source of errors in parsing natural language. In some cases, pure syntactic features cannot be used for prepositional phrase attachment disambiguation while visual features could help. In this work, we are interested in the impact of the integration of such features in a parsing system. We propose a correction strategy pipeline for prepositional attachments using visual information, trained on a multimodal corpus of images and captions. The evaluation of the system shows us that using visual features allows, in certain cases, to correct the errors of a parser. It also helps to identify the most difficult aspects of such integration.
机译:介词短语附件是解析自然语言时错误的重要来源。在某些情况下,纯语法功能不能用于介词短语依附歧义消除,而视觉功能可以提供帮助。在这项工作中,我们对在解析系统中集成这些功能的影响感兴趣。我们建议使用视觉信息对介词附件进行校正的策略流水线,在图像和标题的多模式语料库上进行训练。该系统的评估表明,在某些情况下,使用视觉功能可以纠正解析器的错误。它还有助于确定此类集成最困难的方面。

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