LGSIMLSep 4, 2019

Graph Transfer Learning via Adversarial Domain Adaptation with Graph Convolution

arXiv:1909.01541v4136 citationsHas Code
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This addresses the problem of insufficient labeled data for node classification in networks, particularly in scenarios without cross-network connections, representing an incremental advance in graph transfer learning.

The paper tackles cross-network node classification by transferring label information from a partially labeled source network to an unlabeled or partially labeled target network, achieving successful transfer with low label rates and substantial domain divergence in experiments.

This paper studies the problem of cross-network node classification to overcome the insufficiency of labeled data in a single network. It aims to leverage the label information in a partially labeled source network to assist node classification in a completely unlabeled or partially labeled target network. Existing methods for single network learning cannot solve this problem due to the domain shift across networks. Some multi-network learning methods heavily rely on the existence of cross-network connections, thus are inapplicable for this problem. To tackle this problem, we propose a novel \textcolor{black}{graph} transfer learning framework AdaGCN by leveraging the techniques of adversarial domain adaptation and graph convolution. It consists of two components: a semi-supervised learning component and an adversarial domain adaptation component. The former aims to learn class discriminative node representations with given label information of the source and target networks, while the latter contributes to mitigating the distribution divergence between the source and target domains to facilitate knowledge transfer. Extensive empirical evaluations on real-world datasets show that AdaGCN can successfully transfer class information with a low label rate on the source network and a substantial divergence between the source and target domains. The source code for reproducing the experimental results is available at https://github.com/daiquanyu/AdaGCN.

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