Graph Neural Networks (GNNs) have achieved tremendous success in a variety of real-world applications by relying on the fixed graph data as input. However, the initial input graph might not be optimal in terms of specific downstream tasks, because of information scarcity, noise, adversarial attacks, or discrepancies between the distribution in graph topology, features, and groundtruth labels. In this paper, we propose a bi-level optimization-based approach for learning the optimal graph structure via directly learning the Personalized PageRank propagation matrix as well as the downstream semi-supervised node classification simultaneously. We also explore a low-rank approximation model for further reducing the time complexity. Empirical evaluations show the superior efficacy and robustness of the proposed model over all baseline methods.
翻译:神经网络图(GNNs)通过将固定图形数据作为投入,在现实世界的各种应用中取得了巨大成功。然而,由于信息稀缺、噪音、对抗性攻击或图表地形、特征和地面真实标签分布的差异,初始输入图在具体的下游任务方面可能不是最佳的。在本文件中,我们提出了一个双级优化方法,通过同时直接学习个性化PageRank传播矩阵和下游半监督节点分类,学习最佳图形结构。我们还探索了一种低级近似模型,以进一步降低时间复杂性。经验性评估显示,拟议的模型对所有基线方法都具有超强效力和稳健性。