International workshop on learning with knowledge graphs: Construction, embedding, and reasoning
A knowledge graph (KG) consists of numerous triples, in which each triple, i.e., (head entity, relation, tail entity), denotes a real-world assertion. Many large-scale KGs have been developed, e.g., general-purpose KGs Freebase and YAGO. Also, lots of domain-specific KGs are emerging, e.g., COVID-19...
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sg-smu-ink.sis_research-94972024-01-04T04:18:03Z International workshop on learning with knowledge graphs: Construction, embedding, and reasoning LI, Qing HUANG, Xiao LIU, Ninghao DONG, Yuxiao PANG, Guansong A knowledge graph (KG) consists of numerous triples, in which each triple, i.e., (head entity, relation, tail entity), denotes a real-world assertion. Many large-scale KGs have been developed, e.g., general-purpose KGs Freebase and YAGO. Also, lots of domain-specific KGs are emerging, e.g., COVID-19 KGs, biomedical KGs, and agricultural KGs. By embedding KGs into low-dimensional vectors, i.e., representations of entities and relations, we could integrate KGs into machine learning models and enhance the performance of many prediction tasks, including search, recommendations, and question answering. During the construction, refinement, embedding, and application of KGs, a variety of KG learning algorithms have been developed to handle challenges in various real-world scenarios. Moreover, graph neural networks have also brought new opportunities to KG learning. This workshop aims to engage with active researchers from KG communities, recommendation communities, natural language processing communities, and other communities, and deliver state-of-the-art research insights into the core challenges in KG learning. 2023-03-03T08:00:00Z text https://ink.library.smu.edu.sg/sis_research/8494 info:doi/10.1145/3539597.3572705 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Graph neutral networks Knowledge graph Natural language processing systems Recommender systems Artificial Intelligence and Robotics Databases and Information Systems |
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Graph neutral networks Knowledge graph Natural language processing systems Recommender systems Artificial Intelligence and Robotics Databases and Information Systems LI, Qing HUANG, Xiao LIU, Ninghao DONG, Yuxiao PANG, Guansong International workshop on learning with knowledge graphs: Construction, embedding, and reasoning |
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A knowledge graph (KG) consists of numerous triples, in which each triple, i.e., (head entity, relation, tail entity), denotes a real-world assertion. Many large-scale KGs have been developed, e.g., general-purpose KGs Freebase and YAGO. Also, lots of domain-specific KGs are emerging, e.g., COVID-19 KGs, biomedical KGs, and agricultural KGs. By embedding KGs into low-dimensional vectors, i.e., representations of entities and relations, we could integrate KGs into machine learning models and enhance the performance of many prediction tasks, including search, recommendations, and question answering. During the construction, refinement, embedding, and application of KGs, a variety of KG learning algorithms have been developed to handle challenges in various real-world scenarios. Moreover, graph neural networks have also brought new opportunities to KG learning. This workshop aims to engage with active researchers from KG communities, recommendation communities, natural language processing communities, and other communities, and deliver state-of-the-art research insights into the core challenges in KG learning. |
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LI, Qing HUANG, Xiao LIU, Ninghao DONG, Yuxiao PANG, Guansong |
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LI, Qing HUANG, Xiao LIU, Ninghao DONG, Yuxiao PANG, Guansong |
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LI, Qing |
title |
International workshop on learning with knowledge graphs: Construction, embedding, and reasoning |
title_short |
International workshop on learning with knowledge graphs: Construction, embedding, and reasoning |
title_full |
International workshop on learning with knowledge graphs: Construction, embedding, and reasoning |
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International workshop on learning with knowledge graphs: Construction, embedding, and reasoning |
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International workshop on learning with knowledge graphs: Construction, embedding, and reasoning |
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international workshop on learning with knowledge graphs: construction, embedding, and reasoning |
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Institutional Knowledge at Singapore Management University |
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2023 |
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https://ink.library.smu.edu.sg/sis_research/8494 |
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