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Efficiently Mining Maximal Frequent Sets for Discovering Association Rules
Hong Kong, SAR July 16-July 18
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/IDEAS.2003.1214916Seventh International Database Engine ...
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Krishnamoorthy Srikumar, Indian Institute of Management
Bharat Bhasker, Indian Institute of Management
We present Metamorphosis, an algorithm for mining Maximal Frequent Sets (MFS) using novel data transformations. Metamorphosis efficiently transforms the dataset to Maximum Collapsible and Compressible (MC2) format and employs a top down strategy with phased bottom up search for mining MFS. Using the chess and connect dataset [benchmark datasets created by Univ. of California, Irvine], we demonstrate that our algorithm offers better performance in mining MFS compared to dGenMax (an algorithm that offers better performance compared to other known algorithms) at higher support levels. Furthermore, we evaluate our algorithm for mining Top-K maximal frequent sets in chess and connect datasets. Our algorithm is especially efficient when the maximal frequent sets are longer.
Citation:
Krishnamoorthy Srikumar, Bharat Bhasker, "Efficiently Mining Maximal Frequent Sets for Discovering Association Rules," ideas, pp.104, Seventh International Database Engineering and Applications Symposium (IDEAS'03), 2003
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