Given a graph with a subset of labeled nodes, we are interested in the quality of the averaging estimator which for an unlabeled node predicts the average of the observations of its labeled neighbors. We rigorously study concentration properties, variance bounds and risk bounds in this context. While the estimator itself is very simple we believe that our results will contribute towards the theoretical understanding of learning on graphs through more sophisticated methods such as Graph Neural Networks.
翻译:给定一个具有标记节点子集的图形,我们对平均估计器的质量感兴趣,该估计器对于未标记的节点预测其标记的邻居的观测值的平均值。我们在这个背景下严格研究浓度特性、方差界和风险界。虽然估计本身非常简单,但我们认为我们的结果将通过更复杂的方法(如图神经网络)有助于理论上理解图形学习。