ANALYSIS OF SUPER MARKET USING ASSOCIATION RULE MINING
Citations Over Time
Abstract
Supermarket analysis is a process to analyze the buyer’s habits to discover the correlations between the different items in their shopping cart. The findings of these correlations can help the retailers to establish a profitable sales strategy by considering frequently purchased items together by customers. Association rule mining is one of the famous data mining techniques used to discover the correlations between one item to another. Association rule mining technique has number of algorithms, but this research focuses on the effectiveness of the combination of the two association rule mining algorithms that are apriori algorithm and eclat algorithm for supermarket analysis. The collaboration of both the algorithms revealed that both methods use the same concept with different criteria of processing the association rules, but the rules itself remains the same.
Related Papers
- → Market Basket Analysis using Apriori Algorithm(2022)5 cited
- → Data Mining on Sales Transaction Data Using the Association Method with Apriori Algorithm(2022)6 cited
- → An efficient filtration approach for mining association rules(2014)3 cited
- A Comparative Study of Association Mining Algorithms for Market Basket Analysis(2017)
- Market Basket Analysis with Mining Association Rule(ShoppingBasketSystem)(2017)