Summary of E-cgl: An Efficient Continual Graph Learner, by Jianhao Guo et al.
E-CGL: An Efficient Continual Graph Learnerby Jianhao Guo, Zixuan Ni, Yun Zhu, Siliang TangFirst submitted…
E-CGL: An Efficient Continual Graph Learnerby Jianhao Guo, Zixuan Ni, Yun Zhu, Siliang TangFirst submitted…
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The Need for a Big World Simulator: A Scientific Challenge for Continual Learningby Saurabh Kumar,…
Distribution-Level Memory Recall for Continual Learning: Preserving Knowledge and Avoiding Confusionby Shaoxu Cheng, Kanglei Geng,…