从分布语义到概念空间:一种新的概念生成计算方法

Stephen McGregor, Kat R. Agres, Matthew Purver, Geraint A. Wiggins
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引用次数: 30

摘要

摘要本文研究词汇空间与语境定义的概念空间之间的关系,为创造性概念发现提供应用。我们定义了一种基于语义空间发现概念成员的计算方法:从语料库共现统计得到的标准分布模型开始,动态选择与种子术语相关的特征维,从而选择定义相关概念的术语子空间。这种方法在基于wordnet的概念发现任务上的表现与领先的分布式语义模型一样好,在某些情况下甚至更好,同时还提供了一个概念模型,作为具有可解释维度的空间中的凸区域。特别是,它在更具体的、情境化的概念上表现得很好;因此,为了研究这一点,我们超越了WordNet,进行了一系列人类实证研究,在这些研究中,我们将输出与人类对新概念成员任务的反应进行了比较。最后,一个独立的评委小组对模型输出和人类反应进行评分,在许多情况下显示出相似的评分,以及一些共性和分歧,这些共性和分歧揭示了计算概念发现的有趣问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Distributional Semantics to Conceptual Spaces: A Novel Computational Method for Concept Creation
Abstract We investigate the relationship between lexical spaces and contextually-defined conceptual spaces, offering applications to creative concept discovery. We define a computational method for discovering members of concepts based on semantic spaces: starting with a standard distributional model derived from corpus co-occurrence statistics, we dynamically select characteristic dimensions associated with seed terms, and thus a subspace of terms defining the related concept. This approach performs as well as, and in some cases better than, leading distributional semantic models on a WordNet-based concept discovery task, while also providing a model of concepts as convex regions within a space with interpretable dimensions. In particular, it performs well on more specific, contextualized concepts; to investigate this we therefore move beyond WordNet to a set of human empirical studies, in which we compare output against human responses on a membership task for novel concepts. Finally, a separate panel of judges rate both model output and human responses, showing similar ratings in many cases, and some commonalities and divergences which reveal interesting issues for computational concept discovery.
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