What a neural language model tells us about spatial relations

M. Ghanimifard, Simon Dobnik
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引用次数: 2

Abstract

Understanding and generating spatial descriptions requires knowledge about what objects are related, their functional interactions, and where the objects are geometrically located. Different spatial relations have different functional and geometric bias. The wide usage of neural language models in different areas including generation of image description motivates the study of what kind of knowledge is encoded in neural language models about individual spatial relations. With the premise that the functional bias of relations is expressed in their word distributions, we construct multi-word distributional vector representations and show that these representations perform well on intrinsic semantic reasoning tasks, thus confirming our premise. A comparison of our vector representations to human semantic judgments indicates that different bias (functional or geometric) is captured in different data collection tasks which suggests that the contribution of the two meaning modalities is dynamic, related to the context of the task.
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神经语言模型告诉我们空间关系
理解和生成空间描述需要了解哪些对象是相关的,它们的功能相互作用,以及对象在几何上的位置。不同的空间关系具有不同的功能和几何偏差。神经语言模型在不同领域的广泛应用,包括图像描述的生成,激发了对个体空间关系的知识在神经语言模型中编码的研究。在关系的功能偏差以其词分布表示的前提下,我们构建了多词分布向量表示,并表明这些表示在内在语义推理任务上表现良好,从而证实了我们的前提。我们的向量表示与人类语义判断的比较表明,在不同的数据收集任务中捕获了不同的偏差(功能或几何),这表明两种意义模式的贡献是动态的,与任务的上下文有关。
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