TY - JOUR
T1 - 基于解析图嵌入和加权图卷积网络的知识图谱补全
AU - Luo, Meiqiu
AU - Zhang, Chunxia
AU - Peng, Cheng
AU - Zhang, Xin
AU - Guo, Guisuo
AU - Niu, Zhendong
N1 - Publisher Copyright:
© Science Press (China). All rights reserved.
PY - 2022
Y1 - 2022
N2 - Knowledge graph completion is an important research issue in knowledge graph construction, knowledge engineering, and natural language processing. A knowledge graph is a knowledge support for realizing accurate knowledge services in general and professional fields. It is also an important breakthrough foundation in information retrieval, question-and-answer interactions, and information recommendation. The low quality and small scale of the knowledge graph are the main bottlenecks that hinder its wide applications. The purpose of knowledge graph completion is to build a large-scale and high-quality knowledge graph for continuously updating and expanding the knowledge graph. Aiming at the difficulty of knowledge graph completion methods to extract deep semantic features from auxiliary information, such as unstructured texts, this study proposes a knowledge graph completion method based on parsing graph embedding and weighted graph convolutional network. This method uses the weighted graph convolutional network to model the semantic dependency parsing of the entity description and construct the semantic dependency parsing graph embedding. Furthermore, it introduces a multi-grained sentence-embedding generation method of the entity description, which is intended to build entity representation learning that can capture multi-grained semantics and deep-level semantic features. The experimental results on two public datasets show that the proposed knowledge graph completion approach outperforms the existing methods, thereby demonstrating its effectiveness and superiority.
AB - Knowledge graph completion is an important research issue in knowledge graph construction, knowledge engineering, and natural language processing. A knowledge graph is a knowledge support for realizing accurate knowledge services in general and professional fields. It is also an important breakthrough foundation in information retrieval, question-and-answer interactions, and information recommendation. The low quality and small scale of the knowledge graph are the main bottlenecks that hinder its wide applications. The purpose of knowledge graph completion is to build a large-scale and high-quality knowledge graph for continuously updating and expanding the knowledge graph. Aiming at the difficulty of knowledge graph completion methods to extract deep semantic features from auxiliary information, such as unstructured texts, this study proposes a knowledge graph completion method based on parsing graph embedding and weighted graph convolutional network. This method uses the weighted graph convolutional network to model the semantic dependency parsing of the entity description and construct the semantic dependency parsing graph embedding. Furthermore, it introduces a multi-grained sentence-embedding generation method of the entity description, which is intended to build entity representation learning that can capture multi-grained semantics and deep-level semantic features. The experimental results on two public datasets show that the proposed knowledge graph completion approach outperforms the existing methods, thereby demonstrating its effectiveness and superiority.
KW - entity representation learning
KW - knowledge graph completion
KW - parsing graph embedding
KW - semantic dependency parsing
KW - weighted graph convolutional network
UR - http://www.scopus.com/inward/record.url?scp=85147651960&partnerID=8YFLogxK
U2 - 10.1360/SSI-2021-0217
DO - 10.1360/SSI-2021-0217
M3 - 文章
AN - SCOPUS:85147651960
SN - 1674-7267
VL - 52
SP - 2037
EP - 2057
JO - Scientia Sinica Informationis
JF - Scientia Sinica Informationis
IS - 11
ER -