英语名词-名词复合词的视觉基础解读

Inga Lang, Lonneke van der Plas, M. Nissim, Albert Gatt
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引用次数: 0

摘要

名词-名词复合词在英语中经常出现。准确的NNC解释,即确定NNC组成部分之间的隐含关系,对于许多自然语言处理任务的推进至关重要。到目前为止,计算NNC解释仅限于涉及语言表示的方法。然而,许多研究表明,以视觉或其他方式为基础的语言表征可以提高这一任务和其他任务的表现。我们的工作是对NNC口译任务的语言表征和视觉语言表征进行新颖的比较。我们将NNC解释定义为一个关系分类任务,在一个大型的、带关系注释的NNC数据集上进行评估。我们结合分布词向量和图像向量来研究视觉信息如何帮助改进NNC解释系统。我们发现,在许多情况下,添加视觉向量可以提高数据集的分类性能。
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Visually Grounded Interpretation of Noun-Noun Compounds in English
Noun-noun compounds (NNCs) occur frequently in the English language. Accurate NNC interpretation, i.e. determining the implicit relationship between the constituents of a NNC, is crucial for the advancement of many natural language processing tasks. Until now, computational NNC interpretation has been limited to approaches involving linguistic representations only. However, much research suggests that grounding linguistic representations in vision or other modalities can increase performance on this and other tasks. Our work is a novel comparison of linguistic and visuo-linguistic representations for the task of NNC interpretation. We frame NNC interpretation as a relation classification task, evaluating on a large, relationally-annotated NNC dataset. We combine distributional word vectors with image vectors to investigate how visual information can help improve NNC interpretation systems. We find that adding visual vectors increases classification performance on our dataset in many cases.
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