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Scrutinizing Frequent Pattern Discovery Performance

Full Text: icde05.pdf PDF

Benchmarking technical solutions is as important as the solutions themselves. Yet many fields still lack any type of rigorous evaluation. Performance benchmarking has always been an important issue in databases and has played a significant role in the development, deployment and adoption of technologies. To help assessing the myriad algorithms for frequent itemset mining, we built an open framework and testbed to analytically study the performance of different algorithms and their implementations, and contrast their achievements given different data characteristics, different conditions, and different types of patterns to discover and their constraints. This facilitates reporting consistent and reproducible performance results using known conditions.

Citation

O. Zaiane, M. El-Hajj, Y. Li, S. Luk. "Scrutinizing Frequent Pattern Discovery Performance". IEEE International Conference on Data Engineering (ICDE), Tokyo, Japan, pp 1109-1110, April 2005.

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Category: In Conference
Web Links: IEEE

BibTeX

@incollection{Zaiane+al:IEEEICDM05,
  author = {Osmar R. Zaiane and Mohammad El-Hajj and Yi Li and Stella Luk},
  title = {Scrutinizing Frequent Pattern Discovery Performance},
  Pages = {1109-1110},
  booktitle = {IEEE International Conference on Data Engineering (ICDE)},
  year = 2005,
}

Last Updated: January 31, 2020
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