Personal Information

  • Doctoral Supervisor
  • Master Tutor
  • (教授)
  • E-Mail:

  • Date of Employment:

    2004-01-12
  • Education Level:

    With Certificate of Graduation for Doctorate Study
  • Gender:

    Male
  • Professional Title:

    教授
  • Status:

    Employed
  • Alma Mater:

    西安交通大学
  • Have Any Overseas Experience:

    No
  • Foreign Personnel or Not:

    No
  • Discipline:

    Control Science and Engineering

Papers

Home > Research > Papers

Approximate Top-K Answering under Uncertain Schema Mappings

  • Date:2025-04-30
  • Title of Paper:Approximate Top-K Answering under Uncertain Schema Mappings
  • Journal:Data & Knowledge Engineering.
  • Summary:Data integration techniques provide a communication bridge between isolated sources and offer a platform for information exchange. When the schemas of heterogeneous data sources map to the centralized schema in a mediated data integration system or a source schema maps to a target schema in a peer-to-peer system, multiple schema mappings may exist due to the ambiguities in the attribute matching. The obscure schema mappings lead to the uncertainty in query answering, and frequently people are only interested in retrieving the best k answers (top-k) with the biggest probabilities. Retrieving the top-k answers efficiently has become a research issue. For uncertain queries, two semantics, by-table and by-tuple, have been developed to capture top-k answers based on the schema mapping probabilities. However, although the existing algorithms support certain features to capture the accurate top-k answers and avoid accessing all data from sources, they cannot effectively reduce the number of processed tuples in most cases. In this paper, new algorithms based on the histogram approximation and heuristic are proposed to efficiently identify the top-k answers for the data integration systems under uncertain schema mappings. In the experiments, the Histogram algorithm in the by-table semantics and the expected approach in the by-tuple semantics are shown to significantly reduce the number of processed tuples while maintaining high accuracy with the estimated probabilistic confidence.
  • Co-author:李隆庄,田锋等
  • Volume:118
  • Page Number:71-91
  • Translation or Not:No
  • Date of Publication:2018-12-09
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