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Eureka: Neural Insight Learning for Knowledge Graph Reasoning

Authors :
Zhang, Alex X.
Liang, Xun
Wu, Bo
Zheng, Xiangping
Zhang, Sensen
Guo, Yuhui
Wang, Jun
Liu, Xinyao
Zhang, Alex X.
Liang, Xun
Wu, Bo
Zheng, Xiangping
Zhang, Sensen
Guo, Yuhui
Wang, Jun
Liu, Xinyao
Publication Year :
2022

Abstract

The human recognition system has presented the remarkable ability to effortlessly learn novel knowledge from only a few trigger events based on prior knowledge, which is called insight learning. Mimicking such behavior on Knowledge Graph Reasoning (KGR) is an interesting and challenging research problem with many practical applications. Simultaneously, existing works, such as knowledge embedding and few-shot learning models, have been limited to conducting KGR in either “seen-to-seen” or “unseen-to-unseen” scenarios. To this end, we propose a neural insight learning framework named Eureka to bridge the “seen” to “unseen” gap. Eureka is empowered to learn the seen relations with sufficient training triples while providing the flexibility of learning unseen relations given only one trigger without sacrificing its performance on seen relations. Eureka meets our expectation of the model to acquire seen and unseen relations at no extra cost, and eliminate the need to retrain when encountering emerging unseen relations. Experimental results on two real-world datasets demonstrate that the proposed framework also outperforms various state-of-the-art baselines on datasets of both seen and unseen relations.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1405233640
Document Type :
Electronic Resource