Masterclass: Hands-on Automatic Quality Assessment of Knowledge Graphs
May 8 | KGC 2023
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1h 34m
This masterclass will empower attendees to identify and detect quality issues in knowledge graphs, with methods inspired from linguistics, statistical modeling, and ontological analysis. By the end of it, they will be able to uncover key quality dimensions, typical causes of low scores in each of them, and apply automated methods for detecting and resolving quality issues in knowledge graphs.
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