It is well established that graph neural networks (GNNs) can be interpreted and designed from the perspective of optimization objective. With this clear optimization objective, the deduced GNNs architecture has sound theoretical foundation, which is able to flexibly remedy the weakness of GNNs. However, this optimization objective is only proved for GNNs with single-relational graph. Can we infer a new type of GNNs for multi-relational graphs by extending this optimization objective, so as to simultaneously solve the issues in previous multi-relational GNNs, e.g., over-parameterization? In this paper, we propose a novel ensemble multi-relational GNNs by designing an ensemble multi-relational (EMR) optimization objective. This EMR optimization objective is able to derive an iterative updating rule, which can be formalized as an ensemble message passing (EnMP) layer with multi-relations. We further analyze the nice properties of EnMP layer, e.g., the relationship with multi-relational personalized PageRank. Finally, a new multi-relational GNNs which well alleviate the over-smoothing and over-parameterization issues are proposed. Extensive experiments conducted on four benchmark datasets well demonstrate the effectiveness of the proposed model.
翻译:众所周知,图形神经网络(GNN)可以从优化目标的角度来解释和设计。根据这一明确的优化目标,推断出GNN的架构具有健全的理论基础,能够灵活地纠正GNN的弱点。然而,这一优化目标只能用单一关系图为GNN提供证明。我们能否通过扩展这一优化目标为多关系图推导一种新的类型的GNN,以便同时解决以前多关系GNN的问题,例如过度参数化?在本文件中,我们提出一个新的混合多关系GNN的理论基础,它能够灵活地纠正GNN的弱点。但是,这一优化目标只能用单一关系图为GNNN提供证明。我们能否通过扩展这一优化目标,为多关系图推导出一种新型的GNNN的GNN,它可以通过多关系模型的形式正式地传递信息。我们进一步分析EMP层的良好特性,例如,与多关系化个人关系化的PeANk的关系。最后,一个新的多关系化多关系化多关系模型化的实验性化的模型,已经超越了拟议的四大基础。