论文标题
具有自适应连接采样的贝叶斯图神经网络
Bayesian Graph Neural Networks with Adaptive Connection Sampling
论文作者
论文摘要
我们提出了一个在图神经网络(GNN)中自适应连接采样的统一框架,该框架概括了现有的训练GNN的随机正规化方法。拟议的框架不仅减轻了深度GNN的过度光滑和过度拟合的趋势,而且还可以使GNN的图形分析任务不确定性学习。我们的自适应连接采样无需使用固定的采样率或将它们作为模型超参数作为模型超参数,而是可以在全球和局部时尚中与GNN模型参数共同训练。具有自适应连接采样的GNN训练在数学上与训练贝叶斯GNN的有效近似相同。通过对基准数据集进行消融研究的实验结果验证了给定图形训练数据的自适应学习采样率是提高GNN在半监督节点分类中的性能的关键,而不太容易过度平滑和过度拟合,并且使用更健壮的预测。
We propose a unified framework for adaptive connection sampling in graph neural networks (GNNs) that generalizes existing stochastic regularization methods for training GNNs. The proposed framework not only alleviates over-smoothing and over-fitting tendencies of deep GNNs, but also enables learning with uncertainty in graph analytic tasks with GNNs. Instead of using fixed sampling rates or hand-tuning them as model hyperparameters in existing stochastic regularization methods, our adaptive connection sampling can be trained jointly with GNN model parameters in both global and local fashions. GNN training with adaptive connection sampling is shown to be mathematically equivalent to an efficient approximation of training Bayesian GNNs. Experimental results with ablation studies on benchmark datasets validate that adaptively learning the sampling rate given graph training data is the key to boost the performance of GNNs in semi-supervised node classification, less prone to over-smoothing and over-fitting with more robust prediction.