Periodic knowledge discovery through parallel paradigm
Periodic knowledge discovery through parallel paradigm
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Date
2012-12-01
Authors
Rani, K. Swarupa
Prasad, V. Kamakshi
Rao, C. Raghavendra
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Journal ISSN
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Abstract
Temporal association rules are largely different from traditional association rules by the fact that temporal association rules attempt to model temporal relationships in the data. Effective gain in any business is possible to achieve due to the adaptive knowledge which demands customized rules for specific conditions. Several parallel algorithms are useful to extract frequent patterns from large databases. This paper proposes a novel methodology for extracting calendric association rules and hence the general rules for a timestamp transactional database through modified Parallel Compact Pattern Tree construction strategy. The same has been demonstrated through mushroom dataset and synthetic temporal transactions. © 2012 IEEE.
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Keywords
CP-Tree,
Knowledge Discovery,
Parallel Processing,
Temporal association rules,
Transactional Database
Citation
Proceedings of 2012 2nd IEEE International Conference on Parallel, Distributed and Grid Computing, PDGC 2012