This paper studies learning on text-attributed graphs (TAGs), where each node is associated with a text description. An ideal solution for such a problem would be integrating both the text and graph structure information with large language models and graph neural networks (GNNs). However, the problem becomes very challenging when graphs are large due to the high computational complexity brought by training large language models and GNNs together. In this paper, we propose an efficient and effective solution to learning on large text-attributed graphs by fusing graph structure and language learning with a variational Expectation-Maximization (EM) framework, called GLEM. Instead of simultaneously training large language models and GNNs on big graphs, GLEM proposes to alternatively update the two modules in the E-step and M-step. Such a procedure allows training the two modules separately while simultaneously allowing the two modules to interact and mutually enhance each other. Extensive experiments on multiple data sets demonstrate the efficiency and effectiveness of the proposed approach.
翻译:本文研究如何学习每个节点都与文本描述相联系的文本配制图表(TAGs),这一问题的理想解决办法是将文本和图形结构信息与大型语言模型和图形神经网络(GNNs)相结合;然而,由于培训大型语言模型和GNNs一起带来的计算复杂性很高,如果图表是巨大的,则问题就变得非常棘手。在本文件中,我们提出了一个高效和有效的解决办法,通过使用图表结构和语言学习与变异期望-最大化(EM)框架(称为GLEM)一起学习大文本配制图表和图形结构信息。GLEM提出,而不是同时在大图表上培训大型语言模型和GNNs,而是在电子步骤和M步骤中更新两个模块。这样的程序可以分别培训这两个模块,同时允许两个模块相互作用和相互加强。在多个数据集上进行的广泛实验显示了拟议方法的效率和有效性。</s>