Abstract
Relentless Itemset Exhuming (RIE) is a archetypal data Exhuming topic with many authentic world applications such as market basket analysis. In authentic world the dataset size grows, researchers have prophesied Map Reduce version of RIE contrivance to meet the immensely colossal data challenge. Subsisting relentless itemset contrivance cannot distribute data equipollent among all the nodes and MR Apriori contrivance paper utilize manifold map/reduce procedures and engender an inordinate extent of key-value pairs with value. In this paper present a novel collateral, distributed contrivance which addresses these quandaries. We prophesis an ameliorated collateral contrivance and discuss its applications in this paper. In particular, we introduce a minute files processing strategy for massive minute files datasets to compensate defects of low read/indite speed and low processing efficiency in Hadoop. Moreover,we utilize MapReduce to implement the collateralization of FP-Magnification contrivance, thereby amending the overall performance of relentless itemsets exhuming. In the experiments we withal show that the prophesied contrivance returns a good performance compare with subsisting contrivance. FP-Magnification contrivance and discuss its applications in this paper. In
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