An experimental approach for discovering association rules using FP-growth algorithm
Author(s): Jahnavi G and Boyella Mala Konda Reddy
Abstract: Information mining is utilized to manage the immense size of the information put away in the data set to extricate the ideal data and information. It has different strategies for the extraction of information; affiliation rule mining is the best information mining procedure among them. It finds covered up or wanted example from huge measure of information. Among the current strategies the continuous example development (FP development) calculation is the most productive calculation in discovering the ideal affiliation rules frequent example mining is one of the dynamic examination topics in information mining. Affiliation Rule Mining is a space of information mining that spotlights on pruning up-and-comer keys. The FP-development calculation is presently probably the quickest ways to deal with continuous thing set mining. In this paper, we present a technique for mining affiliation rules utilizing FP-development calculation in enormous data sets of deals exchanges. We carry out the FP-development calculation for discovering solid affiliation rules utilizing Supermarket information, which was taken from UCI Machine Repository information. Exploratory outcomes show that this calculation can find incessant itemsets and successfully mine solid affiliation rules.
Jahnavi G, Boyella Mala Konda Reddy. An experimental approach for discovering association rules using FP-growth algorithm. Int J Circuit Comput Networking 2021;2(1):27-29. DOI: 10.33545/27075923.2021.v2.i1a.23