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Meta-Knowledge Transfer for Inductive Knowledge Graph Embedding

Mingyang Chen, Wen Zhang, Yushan Zhu, Hongting Zhou, Zonggang Yuan, Changliang Xu, Huajun Chen

2022Proceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval65 citationsDOI

Abstract

Knowledge graphs (KGs) consisting of a large number of triples have become widespread recently, and many knowledge graph embedding (KGE) methods are proposed to embed entities and relations of a KG into continuous vector spaces. Such embedding methods simplify the operations of conducting various in-KG tasks (e.g., link prediction) and out-of-KG tasks (e.g., question answering). They can be viewed as general solutions for representing KGs. However, existing KGE methods are not applicable to inductive settings, where a model trained on source KGs will be tested on target KGs with entities unseen during model training. Existing works focusing on KGs in inductive settings can only solve the inductive relation prediction task. They can not handle other out-of-KG tasks as general as KGE methods since they don't produce embeddings for entities. In this paper, to achieve inductive knowledge graph embedding, we propose a model MorsE, which does not learn embeddings for entities but learns transferable meta-knowledge that can be used to produce entity embeddings. Such meta-knowledge is modeled by entity-independent modules and learned by meta-learning. Experimental results show that our model significantly outperforms corresponding baselines for in-KG and out-of-KG tasks in inductive settings.

Topics & Concepts

EmbeddingComputer scienceKnowledge graphInductive biasRelation (database)GraphTask (project management)Link (geometry)Theoretical computer scienceArtificial intelligenceMachine learningData miningMulti-task learningManagementComputer networkEconomicsAdvanced Graph Neural NetworksTopic ModelingDomain Adaptation and Few-Shot Learning