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Papers/Multilingual Knowledge Graph Completion via Ensemble Knowl...

Multilingual Knowledge Graph Completion via Ensemble Knowledge Transfer

Xuelu Chen, Muhao Chen, Changjun Fan, Ankith Uppunda, Yizhou Sun, Carlo Zaniolo

2020-10-07Findings of the Association for Computational Linguistics 2020Knowledge Graph CompletionTransfer LearningSelf-Learning
PaperPDFCode(official)

Abstract

Predicting missing facts in a knowledge graph (KG) is a crucial task in knowledge base construction and reasoning, and it has been the subject of much research in recent works using KG embeddings. While existing KG embedding approaches mainly learn and predict facts within a single KG, a more plausible solution would benefit from the knowledge in multiple language-specific KGs, considering that different KGs have their own strengths and limitations on data quality and coverage. This is quite challenging, since the transfer of knowledge among multiple independently maintained KGs is often hindered by the insufficiency of alignment information and the inconsistency of described facts. In this paper, we propose KEnS, a novel framework for embedding learning and ensemble knowledge transfer across a number of language-specific KGs. KEnS embeds all KGs in a shared embedding space, where the association of entities is captured based on self-learning. Then, KEnS performs ensemble inference to combine prediction results from embeddings of multiple language-specific KGs, for which multiple ensemble techniques are investigated. Experiments on five real-world language-specific KGs show that KEnS consistently improves state-of-the-art methods on KG completion, via effectively identifying and leveraging complementary knowledge.

Results

TaskDatasetMetricValueModel
Knowledge GraphsDBP-5L (English)MRR41.3AlignKGC
Knowledge GraphsDPB-5L (French)MRR59.5AlignKGC
Knowledge Graph CompletionDBP-5L (English)MRR41.3AlignKGC
Knowledge Graph CompletionDPB-5L (French)MRR59.5AlignKGC
Large Language ModelDBP-5L (English)MRR41.3AlignKGC
Large Language ModelDPB-5L (French)MRR59.5AlignKGC
Inductive knowledge graph completionDBP-5L (English)MRR41.3AlignKGC
Inductive knowledge graph completionDPB-5L (French)MRR59.5AlignKGC

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