图神经网络迁移学习的强化样本选择

Bo Wu, Xun Liang, Xiangping Zheng, Jun Wang, Xiaoping Zhou
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引用次数: 0

摘要

图神经网络(gnn)已经成为学习图结构数据的一种实用范例,它可以通过递归地聚合相邻节点的信息来生成节点表示。最近的研究利用自监督任务从源域图中学习可转移知识,提高gnn在目标域图上的性能。然而,由于源域存在大量低质量和标注错误的图,导致目标域图存在负迁移问题。为了解决这一挑战,我们提出了RSS-GNN,一种用于gnn迁移学习的强化样本选择。关键的见解是,RSS-GNN试图使用强化学习(RL)来指导迁移学习,并缩小源域和目标域之间的图分歧。我们利用选择分布生成器(SDG)来生成每个图的概率,并选择高质量的图来训练gnn。我们创新地设计了一种奖励机制来衡量选择过程的质量,并采用政策梯度来更新可持续发展目标参数。大量的实验表明,我们的方法可以与各种gnn框架兼容,并且与最先进的方法相比,可以产生优越的性能。
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Reinforced Sample Selection for Graph Neural Networks Transfer Learning
Graph neural networks (GNNs) have become a practical paradigm for learning graph-structured data, which can generate node representations by recursively aggregating information from neighbor nodes. Recent works utilize self-supervised tasks to learn transferable knowledge from source domain graphs and improve the GNNs performance on target domain graphs. However, there are considerable low-quality and incorrect-labeled graphs in the source domain, which leads to the negative transfer problem in target domain graphs. To tackle this challenge, we propose RSS-GNN, a reinforced sample selection for GNNs transfer learning. The critical insight is that RSS-GNN attempts to use reinforcement learning (RL) to guide transfer learning and narrow the graph divergence between the source and the target domain. We leverage a selection distribution generator (SDG) to produce the probability for each graph and select high-quality graphs to train GNNs. We innovatively designed a reward mechanism to measure the quality of the selection process and employ the policy gradient to update SDG parameters. Extensive experiments demonstrate that our approach can be compatible with various GNNs frameworks and yields superior performance compared to state-of-the-art methods.
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