CoCo: A Coupled Contrastive Framework for Unsupervised Domain Adaptive Graph Classification

Nan Yin, Libin Shen, Mengzhu Wang, L. Lan, Zeyu Ma, C. Chen, Xiansheng Hua, Xiao Luo
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引用次数: 7

Abstract

Although graph neural networks (GNNs) have achieved impressive achievements in graph classification, they often need abundant task-specific labels, which could be extensively costly to acquire. A credible solution is to explore additional labeled graphs to enhance unsupervised learning on the target domain. However, how to apply GNNs to domain adaptation remains unsolved owing to the insufficient exploration of graph topology and the significant domain discrepancy. In this paper, we propose Coupled Contrastive Graph Representation Learning (CoCo), which extracts the topological information from coupled learning branches and reduces the domain discrepancy with coupled contrastive learning. CoCo contains a graph convolutional network branch and a hierarchical graph kernel network branch, which explore graph topology in implicit and explicit manners. Besides, we incorporate coupled branches into a holistic multi-view contrastive learning framework, which not only incorporates graph representations learned from complementary views for enhanced understanding, but also encourages the similarity between cross-domain example pairs with the same semantics for domain alignment. Extensive experiments on popular datasets show that our CoCo outperforms these competing baselines in different settings generally.
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CoCo:无监督域自适应图分类的耦合对比框架
尽管图神经网络(gnn)在图分类方面取得了令人瞩目的成就,但它们往往需要大量的任务特定标签,而这些标签的获取成本可能非常高。一个可靠的解决方案是探索额外的标记图来增强目标域上的无监督学习。然而,由于对图拓扑的探索不足和领域差异较大,如何将gnn应用于领域自适应仍然是一个未解决的问题。在本文中,我们提出了耦合对比图表示学习(CoCo),它从耦合学习分支中提取拓扑信息,并通过耦合对比学习减少域差异。CoCo包含一个图卷积网络分支和一个分层图核网络分支,它们以隐式和显式的方式探索图拓扑。此外,我们将耦合分支合并到一个整体的多视图对比学习框架中,该框架不仅结合了从互补视图中学习的图表示以增强理解,而且还鼓励具有相同语义的跨域示例对之间的相似性以进行域对齐。在流行数据集上进行的大量实验表明,我们的CoCo在不同设置下的表现通常优于这些竞争基线。
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