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VN Network: Embedding Newly Emerging Entities with Virtual Neighbors

Published: 19 October 2020 Publication History

Abstract

Embedding entities and relations into continuous vector spaces has attracted a surge of interest in recent years. Most embedding methods assume that all test entities are available during training, which makes it time-consuming to retrain embeddings for newly emerging entities. To address this issue, recent works apply the graph neural network on the existing neighbors of the unseen entities. In this paper, we propose a novel framework, namely Virtual Neighbor (VN) network, to address three key challenges. Firstly, to reduce the neighbor sparsity problem, we introduce the concept of the virtual neighbors inferred by rules. And we assign soft labels to these neighbors by solving a rule-constrained problem, rather than simply regarding them as unquestionably true. Secondly, many existing methods only use one-hop or two-hop neighbors for aggregation and ignore the distant information that may be helpful. Instead, we identify both logic and symmetric path rules to capture complex patterns. Finally, instead of one-time injection of rules, we employ an iterative learning scheme between the embedding method and virtual neighbor prediction to capture the interactions within. Experimental results on two knowledge graph completion tasks demonstrate that our VN network significantly outperforms state-of-the-art baselines. Furthermore, results on Subject/Object-R show that our proposed VN network is highly robust to the neighbor sparsity problem.

Supplementary Material

MP4 File (3340531.3411865.mp4)
This presentation video was recorded by Yongquan He, the first author of the paper ?VN Network: Embedding Newly Emerging Entities with Virtual Neighbors?. Yongquan He is from the Institute of Information Engineering at the Chinese Academy of Sciences in Beijing, China.\r\nThe author introduced in order of motivation, method, experiment and conclusion. The motivation module mainly contained the research background and the highlights of the work. The method module introduced each part of the model and the training method. In the experiment part, the data set, evaluation method, and result analysis of the experiment were described. Finally, the work was summarized. Due to the limited recording time and the author is not a native speaker, if you have any questions, please contact the author at [email protected].

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  • (2024)A Diffusion Model for Inductive Knowledge Graph Completion2024 International Joint Conference on Neural Networks (IJCNN)10.1109/IJCNN60899.2024.10651154(1-8)Online publication date: 30-Jun-2024
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      cover image ACM Conferences
      CIKM '20: Proceedings of the 29th ACM International Conference on Information & Knowledge Management
      October 2020
      3619 pages
      ISBN:9781450368599
      DOI:10.1145/3340531
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      Published: 19 October 2020

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      1. knowledge graph embedding
      2. rule-constrained problem
      3. unseen entities
      4. virtual neighbors

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      • National Key R&D Program

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      • (2024)A review of graph neural networks and pretrained language models for knowledge graph reasoningNeurocomputing10.1016/j.neucom.2024.128490609:COnline publication date: 7-Dec-2024
      • (2024)Distributed representations of entities in open-world knowledge graphsKnowledge-Based Systems10.1016/j.knosys.2024.111582290(111582)Online publication date: Apr-2024
      • (2024)Meta-Learning Based Few-Shot Link Prediction for Emerging Knowledge GraphJournal of Computer Science and Technology10.1007/s11390-024-2863-839:5(1058-1077)Online publication date: 1-Sep-2024
      • (2024)Graph and Structured Data Algorithms in Electronic Health Records: A Scoping ReviewMetadata and Semantic Research10.1007/978-3-031-65990-4_6(61-73)Online publication date: 31-Jul-2024
      • (2023)Logical Rule-Based Knowledge Graph Reasoning: A Comprehensive SurveyMathematics10.3390/math1121448611:21(4486)Online publication date: 30-Oct-2023
      • (2023)Iteratively Learning Representations for Unseen Entities with Inter-Rule CorrelationsProceedings of the 32nd ACM International Conference on Information and Knowledge Management10.1145/3583780.3614938(2534-2543)Online publication date: 21-Oct-2023
      • (2023)Disconnected Emerging Knowledge Graph Oriented Inductive Link Prediction2023 IEEE 39th International Conference on Data Engineering (ICDE)10.1109/ICDE55515.2023.00036(381-393)Online publication date: Apr-2023
      • (2023)Recurrent Event Networks Based on Subgraph and Attention EnhancementIEEE Access10.1109/ACCESS.2023.333336511(130888-130898)Online publication date: 2023
      • (2023)Substructure-aware subgraph reasoning for inductive relation predictionThe Journal of Supercomputing10.1007/s11227-023-05493-979:18(21008-21027)Online publication date: 18-Jun-2023
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