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Disentangled Graph Spectral Domain Adaptation

  • Liang Yang
  • , Xin Chen
  • , Jiaming Zhuo
  • , Di Jin
  • , Chuan Wang
  • , Xiaochun Cao
  • , Zhen Wang
  • , Yuanfang Guo
  • Hebei University of Technology
  • Tianjin University
  • Beijing Jiaotong University
  • Shenzhen Campus of Sun Yatsen University
  • Beihang University

科研成果: 期刊稿件会议文章同行评审

1 引用 (Scopus)

摘要

The distribution shifts and the scarcity of labels prevent graph learning methods, especially graph neural networks (GNNs), from generalizing across domains. Compared to Unsupervised Domain Adaptation (UDA) with embedding alignment, Unsupervised Graph Domain Adaptation (UGDA) becomes more challenging in light of the attribute and topology entanglement in the representation. Beyond embedding alignment, UGDA turns to topology alignment but is limited by the ability of the employed topology model and the estimation of pseudo labels. To alleviate this issue, this paper proposed a Disentangled Graph Spectral Domain adaptation (DGSDA) by disentangling attribute and topology alignments and directly aligning flexible graph spectral filters beyond topology. Specifically, Bernstein polynomial approximation, which mimics the behavior of the function to be approximated to a remarkable degree, is employed to capture complicated topology characteristics and avoid the expensive eigenvalue decomposition. Theoretical analysis reveals the tight GDA bound of DGSDA and the rationality of polynomial coefficient regularization. Quantitative and qualitative experiments justify the superiority of the proposed DGSDA.

源语言英语
页(从-至)70632-70648
页数17
期刊Proceedings of Machine Learning Research
267
出版状态已出版 - 2025
活动42nd International Conference on Machine Learning, ICML 2025 - Vancouver, 加拿大
期限: 13 7月 202519 7月 2025

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