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Multi-scale Dilated Convolutional Neural Network Model Based on Attention Mechanism |
WANG Jingbin1, LAI Xiaolian1, LEI Jing1, ZHANG Jingxuan1 |
1. College of Mathematics and Computer Science, Fuzhou University, Fuzhou 350108 |
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Abstract The existing temporal knowledge graph representation methods cannot capture the complex relationships within quadruple well. Most of the neural network based models are unable to model time-varying knowledge and capture rich feature information. Moreover, the interaction between entities and relations in these models is poor. Therefore, a multi-scale dilated convolutional neural network model based on attention mechanism(MSDCA) is proposed. Firstly, a time-aware relation representation is obtained using long short-term memory. Secondly, a multi-scale dilated convolutional neural network is employed to improve the interactivity of the quadruple. Finally, a multi-scale attention mechanism is utilized to capture critical features to improve completion ability of MSDCA. Link prediction experiments on multiple public temporal datasets show the superiority of MSDCA.
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Received: 26 February 2021
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Fund:National Natural Science Foundation of China(No.61672159), Project in Industry-University Cooperation of Fujian |
Corresponding Authors:
WANG Jingbin, master, associate professor. Her research interests include knowledge graph, relation reasoning, distributed data management and knowledge representation.
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About author:: LAI Xiaolian, master student. Her research interests include knowledge graph, relation reasoning and knowledge representation. LEI Jing, master student. Her research interests include knowledge graph, relation reasoning and knowledge representation. ZHANG Jingxuan, master student. Her research interests include knowledge graph, relation reasoning and knowledge representation. |
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