Inductive node-wise graph incremental learning is a challenging task due to the dynamic nature of evolving graphs and the dependencies between nodes. In this paper, we propose a novel experience replay framework, called Structure-Evolution-Aware Experience Replay (SEA-ER), that addresses these challenges by leveraging the topological awareness of GNNs and importance reweighting technique. Our framework effectively addresses the data dependency of node prediction problems in evolving graphs, with a theoretical guarantee that supports its effectiveness. Through empirical evaluation, we demonstrate that our proposed framework outperforms the current state-of-the-art GNN experience replay methods on several benchmark datasets, as measured by metrics such as accuracy and forgetting.
翻译:由于不断演变的图表的动态性质和节点之间的依赖性,进化节点图形增量学习是一项具有挑战性的任务。在本文件中,我们提出一个新的经验重放框架,称为“结构-进化-软件经验重放(SEA-ER)”,通过利用GNN的地貌意识和重要性再加权技术来应对这些挑战。我们的框架有效地解决了节点预测问题在不断演变的图表中的数据依赖性,并提供了支持其有效性的理论保证。我们通过经验评估,证明我们拟议的框架超过了以精确度和遗忘等衡量的数个基准数据集的现有最先进的GNN经验重放方法。