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Affordance Extraction and Inference based on Semantic Role Labeling

机译:基于语义角色标记的可承受提取和推理

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Common-sense reasoning is becoming increasingly important for the advancement of Natural Language Processing. While word embeddings have been very successful, they cannot explain which aspects of 'coffee' and 'tea' make them similar, or how they could be related to 'shop'. In this paper, we propose an explicit word representation that builds upon the Distributional Hypothesis to represent meaning from semantic roles, and allow inference of relations from their meshing, as supported by the affordance-based Indexical Hypothesis. We find that our model improves the state-of-the-art on unsupervised word similarity tasks while allowing for direct inference of new relations from the same vector space.
机译:常识推理对自然语言处理的进步变得越来越重要。虽然Word Embeddings非常成功,但他们无法解释“咖啡”和“茶”的哪些方面使它们类似,或者它们如何与“商店”相关。在本文中,我们提出了一种明确的词表示,其构建在分布假设上,以代表语义角色的意义,并允许从其啮合的关系推断,基于可怜的分子假设所支持。我们发现我们的模型在无监督的单词相似性任务中提高了最先进的,同时允许直接推动来自同一矢量空间的新关系。

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