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GCAL: Adapting Graph Models to Evolving Domain Shifts

22 May 2025
Ziyue Qiao
Qianyi Cai
Hao Dong
Jiawei Gu
Pengyang Wang
Meng Xiao
Xiao Luo
Hui Xiong
    CLL
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Abstract

This paper addresses the challenge of graph domain adaptation on evolving, multiple out-of-distribution (OOD) graphs. Conventional graph domain adaptation methods are confined to single-step adaptation, making them ineffective in handling continuous domain shifts and prone to catastrophic forgetting. This paper introduces the Graph Continual Adaptive Learning (GCAL) method, designed to enhance model sustainability and adaptability across various graph domains. GCAL employs a bilevel optimization strategy. The "adapt" phase uses an information maximization approach to fine-tune the model with new graph domains while re-adapting past memories to mitigate forgetting. Concurrently, the "generate memory" phase, guided by a theoretical lower bound derived from information bottleneck theory, involves a variational memory graph generation module to condense original graphs into memories. Extensive experimental evaluations demonstrate that GCAL substantially outperforms existing methods in terms of adaptability and knowledge retention.

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@article{qiao2025_2505.16860,
  title={ GCAL: Adapting Graph Models to Evolving Domain Shifts },
  author={ Ziyue Qiao and Qianyi Cai and Hao Dong and Jiawei Gu and Pengyang Wang and Meng Xiao and Xiao Luo and Hui Xiong },
  journal={arXiv preprint arXiv:2505.16860},
  year={ 2025 }
}
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