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融合实体类别信息的知识图谱表示学习
引用本文:金婧,万怀宇,林友芳. 融合实体类别信息的知识图谱表示学习[J]. 计算机工程, 2021, 47(4): 77-83. DOI: 10.19678/j.issn.1000-3428.0057353
作者姓名:金婧  万怀宇  林友芳
作者单位:北京交通大学 计算机与信息技术学院 交通数据分析与挖掘北京市重点实验室, 北京 100044
摘    要:知识图谱表示学习通过将实体和关系嵌入连续低维的语义空间中,获取实体和关系的语义关联信息.设计一种融合实体类别信息的类别增强知识图谱表示学习(CEKGRL)模型,构建基于结构与基于类别的实体表示,通过注意力机制捕获实体类别和三元组关系之间的潜在相关性,结合不同实体类别对于某种特定关系的重要程度及实体类别信息进行知识表示学...

关 键 词:知识图谱  知识表示学习  多源信息融合  注意力机制  实体消歧
收稿时间:2020-02-10
修稿时间:2020-03-27

Knowledge Graph Representation Learning Fused with Entity Category Information
JIN Jing,WAN Huaiyu,LIN Youfang. Knowledge Graph Representation Learning Fused with Entity Category Information[J]. Computer Engineering, 2021, 47(4): 77-83. DOI: 10.19678/j.issn.1000-3428.0057353
Authors:JIN Jing  WAN Huaiyu  LIN Youfang
Affiliation:Beijing Key Laboratory of Traffic Data Analysis and Mining, School of Computer and Information Technology, Beijing Jiaotong University, Beijing 100044, China
Abstract:Knowledge graph representation learning embeds both entities and relations into a continuous lowdimensional semantic space,so as to obtain the semantic correlation between entities and relations.This paper proposes a Category-Enhanced Knowledge Graph Representation Learning(CEKGRL)model fused with entity category information.The model constructs structure-based and category-based entity representation,and captures the potential correlation between entity categories and triple relations by introducing the attention mechanism.It combines the different importance of different entity categories for a specific relation and entity category information for Knowledge Representation Learning(KRL).The performance of the model in knowledge graph completion and triple classification tasks is tested,and experimental results show that the CEKGRL model has made significant improvements in the indicators of MeanRank and Hit@10,which are increased by about 23.5%and 7.2 percentage points than the TKRL model in the Filter setting of the entity prediction task.The results indicate that the model has better KRL performance.
Keywords:knowledge graph  Knowledge Representation Learning(KRL)  multi-source information fusion  attention mechanism  entity disambiguation
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