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Natural Language Semantics With Pictures: Some Language Vision Datasets and Potential Uses for Computational Semantics

机译:带图片的自然语言语义学:一些语言和视觉数据集以及计算语义学的潜在用途

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Propelling, and propelled by, the "deep learning revolution", recent years have seen the introduction of ever larger corpora of images annotated with natural language expressions. We survey some of these corpora, taking a perspective that reverses the usual directionality, as it were, by viewing the images as semantic annotation of the natural language expressions. We discuss datasets that can be derived from the corpora, and tasks of potential interest for computational semanticists that can be defined on those. In this, we make use of relations provided by the corpora (namely, the link between expression and image, and that between two expressions linked to the same image) and relations that we can add (similarity relations between expressions, or between images). Specifically, we show that in this way we can create data that can be used to learn and evaluate lexical and compositional grounded semantics, and we show that the "linked to same image" relation tracks a semantic implica-ture relation that is recognisable to annotators even in the absence of the linking image as evidence. Finally, as an example of possible benefits of this approach, we show that an exemplar-model-based approach to implicature beats a (simple) distributional space-based one on some derived datasets. while lending itself to explainability.
机译:近年来,在“深度学习革命”的推动下,人们看到了越来越多的带有自然语言表达的图像语料库。我们通过观察图像作为自然语言表达的语义注释,从某种角度颠倒了通常的方向性,从而对其中一些语料库进行了调查。我们讨论了可以从语料库中获取的数据集,以及可以在其上定义的计算语义学家可能感兴趣的任务。在这种情况下,我们利用语料库提供的关系(即,表达式和图像之间的链接,以及链接到同一图像的两个表达式之间的链接)和我们可以添加的关系(表达式之间或图像之间的相似性关系)。具体来说,我们表明以这种方式我们可以创建可用于学习和评估词汇和构词基础语义的数据,并且我们表明“链接至同一图像”关系跟踪注释者可以识别的语义隐含关系。即使没有链接图像作为证据。最后,作为此方法可能带来的好处的一个示例,我们显示了一种基于示例模型的隐式方法在某些派生数据集上击败了(简单)基于分布空间的方法。同时使其具有可解释性。

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