利用因果子图进行可推广的归纳关系预测

Han Yu, Ziniu Liu, Hongkui Tu, Kai Chen, Aiping Li
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引用次数: 0

摘要

归纳关系预测是知识图谱推理的一项重要学习任务,旨在从现有事实中推断出新事实。以往基于图神经网络(GNN)的方法通过捕捉更多的子图信息,在归纳关系预测方面取得了巨大成功。但是,这些方法汇总了所有推理路径,可能会引入冗余信息。这些冗余信息会随着实体上下文的变化而变化,而且很容易超出训练分布的范围,因此现有的基于 GNN 的方法的泛化能力很差。在这项工作中,我们为归纳关系预测任务提出了一种新型因果知识图推理(CKGR)框架,它具有更好的泛化能力。我们首先从因果关系的角度来看待归纳式关系预测,并构建了一个结构因果模型(SCM)来揭示变量之间的关系。根据我们的假设,CKGR 提取了以查询三元组为条件的因果子图和捷径子图。然后,我们通过对表示空间进行干预,对因果关系理论的后门调整进行参数化。这样,CKGR 就能学习到稳定的因果特征,并减轻与关系预测虚假相关的捷径特征的干扰效应。在现实世界和合成数据集的各种任务中进行的大量实验证明了 CKGR 的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Generalizable inductive relation prediction with causal subgraph

Generalizable inductive relation prediction with causal subgraph

Inductive relation prediction is an important learning task for knowledge graph reasoning that aims to infer new facts from existing ones. Previous graph neural networks (GNNs) based methods have demonstrated great success in inductive relation prediction by capturing more subgraph information. However, they aggregate all reasoning paths which might introduces redundant information. Such redundant information changes with the context of entity and easily outside the training distribution making existing GNN-base methods suffer from poor generalization. In this work, we propose a novel causal knowledge graph reasoning (CKGR) framework for inductive relation prediction task with better generalization. We first take a causal view of inductive relation prediction and construct a structural causal model (SCM) that reveals the relationship between variables. With our assumption, CKGR extracts causal and shortcut subgraphs conditioned on query triplet. Then, we parameter the backdoor adjustment of causality theory by making intervention in representation space. In this way, CKGR can learn stable causal feature and alleviates the confounding effect of shortcut features that are spuriously correlated to relation prediction. Extensive experiments on various tasks with real-world and synthetic datasets demonstrate the effectiveness of CKGR.

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