2022
DOI: 10.1109/jiot.2021.3092360
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Tensor Graph Attention Network for Knowledge Reasoning in Internet of Things

Abstract: Temporal knowledge graphs (TKGs) can effectively model the ever-evolving nature of real-world knowledge, and their completeness and enhancement can be achieved by reasoning new events from existing ones. However, reasoning accuracy is adversely impacted due to an imbalance between new and recurring events in the datasets. To achieve more accurate TKG reasoning, we propose an attention masking-based contrastive event network (AMCEN) with local-global temporal patterns for the two-stage prediction of future even… Show more

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Cited by 6 publications
(1 citation statement)
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“…The knowledge graph is a structured semantic knowledge base that integrates knowledge extraction, data storage, reasoning, and analysis capabilities (Ji et al, 2022). It has been widely used in many fields (Yang et al, 2022;Zou and Lu, 2022;Wu et al, 2023). At present, the application of knowledge graphs in the power field is mainly oriented to aspects such as dispatching, operation and maintenance, and fault handling, and has achieved good results (Pu et al, 2021;Tian et al, 2022;Liu et al, 2023).…”
Section: Open Accessmentioning
confidence: 99%
“…The knowledge graph is a structured semantic knowledge base that integrates knowledge extraction, data storage, reasoning, and analysis capabilities (Ji et al, 2022). It has been widely used in many fields (Yang et al, 2022;Zou and Lu, 2022;Wu et al, 2023). At present, the application of knowledge graphs in the power field is mainly oriented to aspects such as dispatching, operation and maintenance, and fault handling, and has achieved good results (Pu et al, 2021;Tian et al, 2022;Liu et al, 2023).…”
Section: Open Accessmentioning
confidence: 99%