Current graph neural networks (GNNs) that tackle node classification on graphs tend to only focus on nodewise scores and are solely evaluated by nodewise metrics. This limits uncertainty estimation on graphs since nodewise marginals do not fully characterize the joint distribution given the graph structure. In this work, we propose novel edgewise metrics, namely the edgewise expected calibration error (ECE) and the agree/disagree ECEs, which provide criteria for uncertainty estimation on graphs beyond the nodewise setting. Our experiments demonstrate that the proposed edgewise metrics can complement the nodewise results and yield additional insights. Moreover, we show that GNN models which consider the structured prediction problem on graphs tend to have better uncertainty estimations, which illustrates the benefit of going beyond the nodewise setting.
翻译:处理图表节点分类的当前图形神经网络(GNNs)往往只关注节点分数,而且只用节点度度度来评估。这限制了对图表的不确定性估计,因为根据图形结构,正点边缘没有完全描述联合分布。在这项工作中,我们提出了新的边缘度量,即边缘预期校准错误(ECE)和一致/扭曲的ECE,为在节点设置之外对图表的不确定性估计提供了标准。我们的实验表明,拟议的边缘度量度可以补充节点结果并产生更多洞察力。此外,我们显示,考虑图表结构化预测问题的GNNN模型往往有更好的不确定性估计,这说明超越节点设置的好处。