论文标题
图表上高斯流程的托管内核
Transductive Kernels for Gaussian Processes on Graphs
论文作者
论文摘要
图表上的内核在节点级问题方面的选择有限。为了解决这个问题,我们介绍了一个新颖的,广义的内核,用于具有半监督学习的节点特征数据的图形。内核是通过将图形和特征数据作为两个希尔伯特空间进行处理的正则化框架得出的。我们还展示了我们设计的实例上有许多基于内核的模型。以这种方式定义的内核具有偏置性能,这会提高在更少的训练点学习能力,并更好地处理高度非欧国人数据。我们使用合成数据证明了这些优势,其中整个图的分布可以告知标签的模式。最后,通过利用内核中图laplacian的柔性多项式,该模型在半监督分类中也有效地在各种同质级别的图表上进行了有效性。
Kernels on graphs have had limited options for node-level problems. To address this, we present a novel, generalized kernel for graphs with node feature data for semi-supervised learning. The kernel is derived from a regularization framework by treating the graph and feature data as two Hilbert spaces. We also show how numerous kernel-based models on graphs are instances of our design. A kernel defined this way has transductive properties, and this leads to improved ability to learn on fewer training points, as well as better handling of highly non-Euclidean data. We demonstrate these advantages using synthetic data where the distribution of the whole graph can inform the pattern of the labels. Finally, by utilizing a flexible polynomial of the graph Laplacian within the kernel, the model also performed effectively in semi-supervised classification on graphs of various levels of homophily.