In the modern age of social media and networks, graph representations of real-world phenomena have become an incredibly useful source to mine insights. Often, we are interested in understanding how entities in a graph are interconnected. The Graph Neural Network (GNN) has proven to be a very useful tool in a variety of graph learning tasks including node classification, link prediction, and edge classification. However, in most of these tasks, the graph data we are working with may be noisy and may contain spurious edges. That is, there is a lot of uncertainty associated with the underlying graph structure. Recent approaches to modeling uncertainty have been to use a Bayesian framework and view the graph as a random variable with probabilities associated with model parameters. Introducing the Bayesian paradigm to graph-based models, specifically for semi-supervised node classification, has been shown to yield higher classification accuracies. However, the method of graph inference proposed in recent work does not take into account the structure of the graph. In this paper, we propose a novel algorithm called Bayesian Graph Convolutional Network using Neighborhood Random Walk Sampling (BGCN-NRWS), which uses a Markov Chain Monte Carlo (MCMC) based graph sampling algorithm utilizing graph structure, reduces overfitting by using a variational inference layer, and yields consistently competitive classification results compared to the state-of-the-art in semi-supervised node classification.
翻译:在社交媒体和网络的现代时代,真实世界现象的图示已经成为一个令人难以置信的有用见解来源。通常,我们有兴趣了解图表中实体是如何相互联系的。图表神经网络(GNN)已证明是各种图表学习任务中非常有用的工具,包括节点分类、链接预测和边缘分类。然而,在大多数这些任务中,我们正在使用的图表数据可能是吵闹的,可能含有虚假的边缘。也就是说,与基本图表结构相关的不确定性有许多不确定性。最近模拟不确定性的方法是使用贝叶西亚框架,并将图表视为与模型参数相关的概率性随机变量。向基于图形的模型介绍巴伊西亚模式,特别是半超前节点分类分类和边缘分类。但在大多数任务中,我们正在使用的图表推断方法可能并不考虑图表的结构。在本文中,我们建议采用一种叫巴伊西亚的图解分类网络,使用Nieghborborish-行走抽样分析模型的随机变量来查看图表模型,并使用基于不断变压的GCNCN-SAR-Sqol-Sqol 的图表结构,在使用不断变压的升级的图像结构中,在使用不断变压的图像上降低的图像,从而降低的GARMS-SARMMMMS-S-S-C-C-SBAR-RBARBARBARBS-S-S-S-S-S-S-S-S-S-S-S-CARBARBAR/BARBSBSBS-SBSBAR/BAR)。