Map Reduce Based Association Rule Mining from Big Data

Abstract

In today’s world, the shopping is the largest fashionable trend where the transaction processing is meticulous to fetch the items from the shopping transaction history by using traditional Apriori algorithm. An Apriori algorithm is the one which is used for finding frequent pattern from the given dataset. The problem of Apriori is to find useful itemsets for business purpose was time consuming. To overcome this problem, we have proposed Map Reduce based Apriori algorithm which generates frequent itemset and association rules by using parallel computations to reduce computations. The Spark distributed Systems along with data bricks technology have been used. The experimental result shows that have been reduced the time taken fetch the data from the database

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ePrints@Bangalore University

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Last time updated on 21/08/2021

This paper was published in ePrints@Bangalore University.

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