论文标题
图形注意力的因果引导的正则化提高了普遍性
Causally-guided Regularization of Graph Attention Improves Generalizability
论文作者
论文摘要
图形注意力网络估计节点邻居对在本地社区汇总相关信息的关系重要性,以进行预测任务。但是,推断的注意力很容易受到培训数据中虚假的相关性和连通性的影响,从而阻碍了模型的普遍性。我们介绍了CAR,这是图形注意力网络的通用正则化框架。体现因果推理方法,CAR以可扩展方式将注意力机制与主动干预对图连接性的因果关系一致。 CAR与各种图形注意体系结构兼容,我们表明它系统地改善了对各种节点分类任务的普遍性。我们的消融研究表明,汽车对图形结构的方面进行了磨练,这与预测最相关(例如同质性),并且比替代方法更有效地做到了。最后,我们还表明,CAR通过强调淋巴结关系来增强注意力权重的可解释性,这表明了因果假设。对于社交媒体网络大小的图形,汽车指导的图形重新布线方法可以使我们能够将图形卷积方法的可扩展性与图形注意力的更高性能相结合。
Graph attention networks estimate the relational importance of node neighbors to aggregate relevant information over local neighborhoods for a prediction task. However, the inferred attentions are vulnerable to spurious correlations and connectivity in the training data, hampering the generalizability of the model. We introduce CAR, a general-purpose regularization framework for graph attention networks. Embodying a causal inference approach, CAR aligns the attention mechanism with the causal effects of active interventions on graph connectivity in a scalable manner. CAR is compatible with a variety of graph attention architectures, and we show that it systematically improves generalizability on various node classification tasks. Our ablation studies indicate that CAR hones in on the aspects of graph structure most pertinent to the prediction (e.g., homophily), and does so more effectively than alternative approaches. Finally, we also show that CAR enhances interpretability of attention weights by accentuating node-neighbor relations that point to causal hypotheses. For social media network-sized graphs, a CAR-guided graph rewiring approach could allow us to combine the scalability of graph convolutional methods with the higher performance of graph attention.