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CR-TransR: A Knowledge Graph Embedding Model for Cultural Domain

Published: 23 February 2024 Publication History

Abstract

As a combination of information computing technology and the cultural field, cultural computing is gaining more attention. The knowledge graph is also gradually applied as a particular data structure in the cultural area. Based on the domain knowledge graph data of the Beijing Municipal Social Science Project “Mining and Utilization of Cultural Resources in the Ancient Capital of Beijing,” this article proposes a graph representation learning model CR-TransR that integrates cultural attributes. Through the analysis of the data in the cultural field of the ancient capital of Beijing, a cultural feature dictionary is constructed, and a domain-specific feature matrix is constructed in the form of word vector splicing. The feature matrix is used to constrain the embedding graph model TransR, and then the feature matrix and the TransR model are jointly trained to complete the embedded expression of the knowledge graph. Finally, a comparative experiment is carried out on the Beijing ancient capital cultural knowledge graph dataset and the effects of the classic graph embedding algorithms TransE, TransH, and TransR. At the same time, we try to reproduce the embedding method with the core idea of neighbor node information aggregation as the core idea, and CRTransR are compared. The experimental tasks include link prediction and triplet classification, and the experimental results show that the CRTransR model performs better.

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Cited By

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  • (2024)Knowledge Graph Completion Method based on Two-level Attention to Aggregate Neighborhood Multimodal and Type Features2024 6th Asia Symposium on Image Processing (ASIP)10.1109/ASIP63198.2024.00030(125-130)Online publication date: 13-Jun-2024
  • (2024)Supergroup algorithm and knowledge graph construction in museum digital display platformHeliyon10.1016/j.heliyon.2024.e3807610:19(e38076)Online publication date: Oct-2024

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Information & Contributors

Information

Published In

cover image Journal on Computing and Cultural Heritage
Journal on Computing and Cultural Heritage   Volume 17, Issue 1
March 2024
312 pages
EISSN:1556-4711
DOI:10.1145/3613493
Issue’s Table of Contents

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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 23 February 2024
Online AM: 25 October 2023
Accepted: 15 May 2023
Revised: 15 March 2023
Received: 16 May 2022
Published in JOCCH Volume 17, Issue 1

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Author Tags

  1. Beijing ancient capital culture
  2. knowledge graph
  3. cultural calculation
  4. graph embedding

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View all
  • (2024)Knowledge Graph Completion Method based on Two-level Attention to Aggregate Neighborhood Multimodal and Type Features2024 6th Asia Symposium on Image Processing (ASIP)10.1109/ASIP63198.2024.00030(125-130)Online publication date: 13-Jun-2024
  • (2024)Supergroup algorithm and knowledge graph construction in museum digital display platformHeliyon10.1016/j.heliyon.2024.e3807610:19(e38076)Online publication date: Oct-2024

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