论文标题

可靠的图形神经网络通过可靠的聚合

Reliable Graph Neural Networks via Robust Aggregation

论文作者

Geisler, Simon, Zügner, Daniel, Günnemann, Stephan

论文摘要

事实证明,针对图形结构的扰动在降低图神经网络(GNN)的性能方面非常有效,而传统的防御措施(例如对抗性训练)似乎无法改善稳健性。这项工作是由观察到的激励,即可以将对抗的边缘有效地视为对节点的邻域聚集函数的其他样本,从而导致堆积在层上的聚集扭曲。常规的GNN聚合函数(例如总和或均值)可以由单个异常值任意扭曲。我们提出了一个由稳健统计的领域激励的强大聚合函数。我们的方法表现出最大的分解点为0.5,这意味着,只要节点的对抗边缘的比例小于50 \%,聚集的偏差就受到界限。我们的新型聚合功能软体类动物是对MEDOID的完全可区分的概括,因此非常适合端到端的深度学习。将GNN配备给我们的聚合可以提高Cora ML的结构扰动的鲁棒性,而低度淋巴结的倍数为3(CiteSeer上的5.5),为8倍。

Perturbations targeting the graph structure have proven to be extremely effective in reducing the performance of Graph Neural Networks (GNNs), and traditional defenses such as adversarial training do not seem to be able to improve robustness. This work is motivated by the observation that adversarially injected edges effectively can be viewed as additional samples to a node's neighborhood aggregation function, which results in distorted aggregations accumulating over the layers. Conventional GNN aggregation functions, such as a sum or mean, can be distorted arbitrarily by a single outlier. We propose a robust aggregation function motivated by the field of robust statistics. Our approach exhibits the largest possible breakdown point of 0.5, which means that the bias of the aggregation is bounded as long as the fraction of adversarial edges of a node is less than 50\%. Our novel aggregation function, Soft Medoid, is a fully differentiable generalization of the Medoid and therefore lends itself well for end-to-end deep learning. Equipping a GNN with our aggregation improves the robustness with respect to structure perturbations on Cora ML by a factor of 3 (and 5.5 on Citeseer) and by a factor of 8 for low-degree nodes.

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