Incremental Knowledge Base Construction Using DeepDive.

Journal: Proceedings of the VLDB Endowment. International Conference on Very Large Data Bases
Published Date:

Abstract

Populating a database with unstructured information is a long-standing problem in industry and research that encompasses problems of extraction, cleaning, and integration. Recent names used for this problem include dealing with dark data and knowledge base construction (KBC). In this work, we describe DeepDive, a system that combines database and machine learning ideas to help develop KBC systems, and we present techniques to make the KBC process more efficient. We observe that the KBC process is iterative, and we develop techniques to incrementally produce inference results for KBC systems. We propose two methods for incremental inference, based respectively on sampling and variational techniques. We also study the tradeoff space of these methods and develop a simple rule-based optimizer. DeepDive includes all of these contributions, and we evaluate Deep-Dive on five KBC systems, showing that it can speed up KBC inference tasks by up to two orders of magnitude with negligible impact on quality.

Authors

  • Jaeho Shin
    Stanford University.
  • Sen Wu
    1Stanford University, Stanford, CA USA.
  • Feiran Wang
    Stanford University.
  • Christopher De Sa
    Departments of Electrical Engineering and Computer Science, Stanford University.
  • Ce Zhang
    Stanford University.
  • Christopher RĂ©
    1Stanford University, Stanford, CA USA.

Keywords

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