论文标题
部分可观测时空混沌系统的无模型预测
Graph Learning and Its Advancements on Large Language Models: A Holistic Survey
论文作者
论文摘要
图形学习是一个普遍的领域,努力学习节点之间的复杂关系和图形的拓扑结构。多年来,图从图理论超越图形数据挖掘。随着代表学习的出现,它在不同的情况下取得了出色的表现。由于其广泛的应用前景,图形学习吸引了大量的关注。尽管一些研究人员对图形学习进行了令人印象深刻的调查,但他们未能以更连贯的方式连接相关的目标,方法和应用程序。结果,由于图形学习的迅速扩展,他们没有涵盖当前的充足场景和具有挑战性的问题。特别是,大型语言模型最近对人类的生活产生了破坏性影响,但在结构化场景中也表现出相对弱点。如何通过图表学习使这些模型更强大的问题保持开放。我们的调查重点是将图形学习与预训练的语言模型集成在一起的最新进展,特别强调了它们在大语言模型领域的应用。与以前的图形学习调查不同,我们提供了整体评论,该评论从图形结构的角度分析了当前的作品,并讨论了图形学习中最新的应用,趋势和挑战。具体而言,我们通过提出分类法,然后总结图学习中使用的方法开始。然后,我们提供主流应用程序的详细阐明。最后,我们提出了未来的方向。
Graph learning is a prevalent domain that endeavors to learn the intricate relationships among nodes and the topological structure of graphs. Over the years, graph learning has transcended from graph theory to graph data mining. With the advent of representation learning, it has attained remarkable performance in diverse scenarios. Owing to its extensive application prospects, graph learning attracts copious attention. While some researchers have accomplished impressive surveys on graph learning, they failed to connect related objectives, methods, and applications in a more coherent way. As a result, they did not encompass current ample scenarios and challenging problems due to the rapid expansion of graph learning. Particularly, large language models have recently had a disruptive effect on human life, but they also show relative weakness in structured scenarios. The question of how to make these models more powerful with graph learning remains open. Our survey focuses on the most recent advancements in integrating graph learning with pre-trained language models, specifically emphasizing their application within the domain of large language models. Different from previous surveys on graph learning, we provide a holistic review that analyzes current works from the perspective of graph structure, and discusses the latest applications, trends, and challenges in graph learning. Specifically, we commence by proposing a taxonomy and then summarize the methods employed in graph learning. We then provide a detailed elucidation of mainstream applications. Finally, we propose future directions.