Graph Neural Networks (GNNs) have shown excellent performance on graphs that exhibit strong homophily with respect to the node labels i.e. connected nodes have same labels. However, they perform poorly on heterophilic graphs. Recent approaches have typically modified aggregation schemes, designed adaptive graph filters, etc. to address this limitation. In spite of this, the performance on heterophilic graphs can still be poor. We propose a simple alternative method that exploits Truncated Singular Value Decomposition (TSVD) of topological structure and node features. Our approach achieves up to ~30% improvement in performance over state-of-the-art methods on heterophilic graphs. This work is an early investigation into methods that differ from aggregation based approaches. Our experimental results suggest that it might be important to explore other alternatives to aggregation methods for heterophilic setting.
翻译:神经网络图(GNNs)在图表上表现优异,在节点标签(即连接节点有相同的标签)方面表现出强烈的同质性能。 但是,在异性哲学图上表现不佳。 最近的方法一般都修改了汇总计划,设计了适应性图表过滤器等,以解决这一局限性。 尽管如此,异性哲学图的性能仍然可能很差。我们提出了一个简单的替代方法,利用表层结构和节点结构的分解(TSVD) 。我们的方法在异性哲学图上取得了高达~30%的性能改进。这项工作是对不同于基于聚合方法的方法的早期调查。我们的实验结果表明,也许有必要探索其他替代方法来汇总异性哲学设置的方法。