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On-Demand and Lightweight Knowledge Graph Generation -- a Demonstration with DBpedia

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 Added by Heiko Paulheim
 Publication date 2021
and research's language is English




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Modern large-scale knowledge graphs, such as DBpedia, are datasets which require large computational resources to serve and process. Moreover, they often have longer release cycles, which leads to outdated information in those graphs. In this paper, we present DBpedia on Demand -- a system which serves DBpedia resources on demand without the need to materialize and store the entire graph, and which even provides limited querying functionality.



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Predicate constraints of general-purpose knowledge bases (KBs) like Wikidata, DBpedia and Freebase are often limited to subproperty, domain and range constraints. In this demo we showcase CounQER, a system that illustrates the alignment of counting predicates, like staffSize, and enumerating predicates, like workInstitution^{-1} . In the demonstration session, attendees can inspect these alignments, and will learn about the importance of these alignments for KB question answering and curation. CounQER is available at https://counqer.mpi-inf.mpg.de/spo.
125 - Yang Gao , Yi-Fan Li , Yu Lin 2020
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157 - Yunqi Li , Shuyuan Xu , Bo Liu 2021
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171 - Weizhi Ma , Min Zhang , Yue Cao 2019
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