论文标题
概念相关性估计的图形组件对比度学习
Graph Component Contrastive Learning for Concept Relatedness Estimation
论文作者
论文摘要
概念相关性估计(CRE)旨在确定两个给定概念是否相关。现有方法仅考虑概念之间的成对关系,同时忽略可以在概念级的图形结构中编码的高阶关系。我们发现,该基础图满足了CRE的一组内在特性,包括反射性,通勤性和传递性。在本文中,我们正式化了CRE属性,并引入了一个名为CycreteGraph的图形结构。为了解决CRE中的数据稀缺问题,我们引入了一种新型的数据增强方法,以从图中采样新概念对。由于大量潜在的概念对,因此对于数据增强而完全捕获了混凝土图的结构信息是棘手的,因此我们进一步介绍了一种新颖的图形组件对比学习框架,以隐式地学习具体图的完整结构。三个数据集的经验结果比最新模型显示出显着改善。详细的消融研究表明,我们提出的方法可以有效地捕获概念之间的高阶关系。
Concept relatedness estimation (CRE) aims to determine whether two given concepts are related. Existing methods only consider the pairwise relationship between concepts, while overlooking the higher-order relationship that could be encoded in a concept-level graph structure. We discover that this underlying graph satisfies a set of intrinsic properties of CRE, including reflexivity, commutativity, and transitivity. In this paper, we formalize the CRE properties and introduce a graph structure named ConcreteGraph. To address the data scarcity issue in CRE, we introduce a novel data augmentation approach to sample new concept pairs from the graph. As it is intractable for data augmentation to fully capture the structural information of the ConcreteGraph due to a large amount of potential concept pairs, we further introduce a novel Graph Component Contrastive Learning framework to implicitly learn the complete structure of the ConcreteGraph. Empirical results on three datasets show significant improvement over the state-of-the-art model. Detailed ablation studies demonstrate that our proposed approach can effectively capture the high-order relationship among concepts.