Journal article
DELTA: dual consistency delving with topological uncertainty for active graph domain adaptation
- Abstract:
- Graph domain adaptation has recently enabled knowledge transfer across different graphs. However, without the semantic information on target graphs, the performance on target graphs is still far from satisfactory. To address the issue, we study the problem of active graph domain adaptation, which selects a small quantitative of informative nodes on the target graph for extra annotation. This problem is highly challenging due to the complicated topological relationships and the distribution discrepancy across graphs. In this paper, we propose a novel approach named Dual Consistency Delving with Topological Uncertainty (DELTA) for active graph domain adaptation. Our DELTA consists of an edge-oriented graph subnetwork and a path-oriented graph subnetwork, which can explore topological semantics from complementary perspectives. In particular, our edge-oriented graph subnetwork utilizes the message passing mechanism to learn neighborhood information, while our path-oriented graph subnetwork explores high-order relationships from substructures. To jointly learn from two subnetworks, we roughly select informative candidate nodes with the consideration of consistency across two subnetworks. Then, we aggregate local semantics from its K-hop subgraph based on node degrees for topological uncertainty estimation. To overcome potential distribution shifts, we compare target nodes and their corresponding source nodes for discrepancy scores as an additional component for fine selection. Extensive experiments on benchmark datasets demonstrate that DELTA outperforms various state-of-the-art approaches. The code implementation of DELTA is available at https://github.com/goose315/DELTA.
- Publication status:
- Published
- Peer review status:
- Peer reviewed
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(Preview, Version of record, pdf, 9.2MB, Terms of use)
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- Publication website:
- https://openreview.net/forum?id=P5y82LKGbY
Authors
- Publisher:
- Journal of Machine Learning Research
- Journal:
- Transactions on Machine Learning Research More from this journal
- Volume:
- 2025
- Issue:
- 2
- Article number:
- 3548
- Publication date:
- 2025-02-09
- Acceptance date:
- 2025-02-03
- EISSN:
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2835-8856
- ISSN:
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2835-8856
- Language:
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English
- Pubs id:
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2093560
- Local pid:
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pubs:2093560
- Deposit date:
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2025-03-10
- ARK identifier:
Terms of use
- Copyright holder:
- Wang et al.
- Copyright date:
- 2025
- Rights statement:
- © 2025 The Authors. This paper is an open access article distributed under the terms of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
- Licence:
- CC Attribution (CC BY)
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