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  • SigmaKB VLDB16 Demo System and TAC KBP Slot Filling Validation 2016

    Miguel Rodriguez December 20, 2016     Comment Closed     Uncategorized

    Miguel Rodriguez The amount of information available on the web has motivated a number of efforts in creating large-scale knowledge bases (KBs), each with their own methods of automatically extracting relevant information from unstructured text. Despite sharing the same data model, each project is unique, displaying their own strengths and weaknesses related to the size

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Recent Posts

  • Efficient Conditional Rule Mining over Knowledge Bases
  • Taming The Data Monster To Make Better Decisions
  • Mining Rules Incrementally over Large Knowledge Bases
  • Multimodal Learning for Web Information Extraction
  • Archimedes: Efficient Query Processing over Probabilistic Knowledge Bases