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A new sampling algorithm for association rule


, : A new sampling algorithm for association rule. Journal of China Agricultural University 12(3): 85-88

To reduce the amount of time spent scanning the database using the Apriori algorithm, which may decrease the mining accuracy, a study was conducted on sample operations and precision control with the help of frequent item-set. The HAC algorithm based on sampling was then designed.

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