Multi-heterogeneous neighborhood-aware for Knowledge Graphs alignment

Entity alignment is an important task for the Knowledge Graph (KG) completion, which aims to identify the same entities in different KGs. Most of previous works only utilize the relation structures of KGs, but ignore the heterogeneity of relations and attributes of KGs. However, these information ca...

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Veröffentlicht in:Information processing & management 2022-01, Vol.59 (1), p.102790, Article 102790
Hauptverfasser: Cai, Weishan, Wang, Yizhao, Mao, Shun, Zhan, Jieyu, Jiang, Yuncheng
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container_issue 1
container_start_page 102790
container_title Information processing & management
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creator Cai, Weishan
Wang, Yizhao
Mao, Shun
Zhan, Jieyu
Jiang, Yuncheng
description Entity alignment is an important task for the Knowledge Graph (KG) completion, which aims to identify the same entities in different KGs. Most of previous works only utilize the relation structures of KGs, but ignore the heterogeneity of relations and attributes of KGs. However, these information can provide more feature information and improve the accuracy of entity alignment. In this paper, we propose a novel Multi-Heterogeneous Neighborhood-Aware model (MHNA) for KGs alignment. MHNA aggregates multi-heterogeneous information of aligned entities, including the entity name, relations, attributes and attribute values. An important contribution is to design a variant attention mechanism, which adds the feature information of relations and attributes to the calculation of attention coefficients. Extensive experiments on three well-known benchmark datasets show that MHNA significantly outperforms 12 state-of-the-art approaches, demonstrating that our approach has good scalability and superiority in both cross-language and monolingual KGs. An ablation study further supports the effectiveness of our variant attention mechanism. •Multi-source information of aligned entities and their heterogeneous neighbors is used to solve the entity alignment problem.•A variable attention mechanism based on heterogeneous graphs is designed.•Three well-known benchmark datasets that are rarely verified simultaneously in previous methods are used to evaluate this method.
doi_str_mv 10.1016/j.ipm.2021.102790
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subjects Ablation
Alignment
Attention mechanism
Attribute structure
Entity alignment
Graph theory
Heterogeneity
Heterogeneous graph attention
Information management
Knowledge Graphs
Knowledge representation
Neighborhoods
Scalability
title Multi-heterogeneous neighborhood-aware for Knowledge Graphs alignment
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