Learning to rank results in relational keyword search

@inproceedings{Coffman2011LearningTR,
  title={Learning to rank results in relational keyword search},
  author={Joel Coffman and Alfred C. Weaver},
  booktitle={CIKM},
  year={2011}
}
Keyword search within databases has become a hot topic within the research community as databases store increasing amounts of information. Users require an effective method to retrieve information from these databases without learning complex query languages (viz. SQL). Despite the recent research interest, performance and search effectiveness have not received equal attention, and scoring functions in particular have become increasingly complex while providing only modest benefits with regards… CONTINUE READING
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