Data cleaning and XML: the DBLP experience

  title={Data cleaning and XML: the DBLP experience},
  author={Wai Lup Low and W. H. Tok and M. Lee and T. W. Ling},
  journal={Proceedings 18th International Conference on Data Engineering},
  • Wai Lup Low, W. H. Tok, +1 author T. W. Ling
  • Published 2002
  • Computer Science
  • Proceedings 18th International Conference on Data Engineering
  • With the increasing popularity of data-centric XML, data warehousing and mining applications are being developed for rapidly burgeoning XML data repositories. Data quality will no doubt be a critical factor for the success of such applications. Data cleaning, which refers to the processes used to improve data quality, has been well researched in the context of traditional databases. In earlier work we developed a knowledge-based framework for data cleaning relational databases. In this work, we… CONTINUE READING

    Topics from this paper.

    Validity-Sensitive Querying of XML Databases
    • 47
    • PDF
    Correlation-based Attribute Outlier Detection in XML
    • 11
    Detecting Aggregate Incongruities in XML
    Fuzzy Support Vector Machines Based on lambda-Cut
    • 5
    • PDF


    Publications referenced by this paper.
    A knowledge-based approach for duplicate elimination in data cleaning
    • 100
    • PDF
    Cleaning the spurious links in data
    • 41
    The DBLP Computer Science Bibliography: Evolution, Research Issues, Perspectives
    • 363
    Exploratory Data Mining and Data Cleaning
    • 339
    • PDF
    Data quality for the information age
    • 738
    • PDF
    The small world of software reverse engineering
    • 42
    • PDF
    Six Degrees: The Science of a Connected Age
    • D. Watts
    • Computer Science, Engineering
    • 2003
    • 2,110
    • PDF