论文标题
Weisfeiler和Leman进行关系
Weisfeiler and Leman Go Relational
论文作者
论文摘要
知识图,建模多关系数据,改进了许多应用程序,例如问答或图形逻辑推理。最近出现了许多用于此类数据的神经网络,通常超过浅层结构。但是,这种多关系图神经网络的设计是临时的,主要由直觉和经验见解驱动。到目前为止,他们的表现力,彼此之间的关系以及(实用)的学习表现知之甚少。在这里,我们启动了对多关系图神经网络的更有原则理解的研究。也就是说,我们研究了众所周知的关系GCN和组成GCN体系结构的表达能力的局限性,并阐明了他们的实际学习表现。通过将两个体系结构与Weisfeiler-Leman测试的合适版本对齐,我们确定两个模型在区分具有不同结构角色的非同态(多相关)图或顶点方面具有相同的表达能力。此外,通过利用最新的设计表达图神经网络的进展,我们介绍了$ K $ -RN的体系结构,从而克服了上述两个体系结构的表达限制。从经验上讲,我们在小型和大型多关系图上的顶点分类设置中确认了我们的理论发现。
Knowledge graphs, modeling multi-relational data, improve numerous applications such as question answering or graph logical reasoning. Many graph neural networks for such data emerged recently, often outperforming shallow architectures. However, the design of such multi-relational graph neural networks is ad-hoc, driven mainly by intuition and empirical insights. Up to now, their expressivity, their relation to each other, and their (practical) learning performance is poorly understood. Here, we initiate the study of deriving a more principled understanding of multi-relational graph neural networks. Namely, we investigate the limitations in the expressive power of the well-known Relational GCN and Compositional GCN architectures and shed some light on their practical learning performance. By aligning both architectures with a suitable version of the Weisfeiler-Leman test, we establish under which conditions both models have the same expressive power in distinguishing non-isomorphic (multi-relational) graphs or vertices with different structural roles. Further, by leveraging recent progress in designing expressive graph neural networks, we introduce the $k$-RN architecture that provably overcomes the expressiveness limitations of the above two architectures. Empirically, we confirm our theoretical findings in a vertex classification setting over small and large multi-relational graphs.