Extraction of association rule mining using apriori algorithm with wolf search optimisation in R programming

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Abstract

Association rules mining (ARM) is a standout amongst the most essential Data Mining Systems. Find attribute patterns as a binding rule in a data set. The discovery of these suggestion rules would result in a mutual method. Firstly, regular elements are produced and therefore the association rules are extracted. In the literature, different algorithms inspired by nature have been proposed as BCO, ACO, PSO, etc. to find interesting association rules. This article presents the performance of the ARM hybrid approach with the optimization of wolf research based on two different fitness functions. The goal is to discover the best promising rules in the data set, avoiding optimal local solutions. The implementation is done in numerical data that require data discretization as a preliminary phase and therefore the application of ARM with optimization to generate the best rules.

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CITATION STYLE

APA

Jain, G., & Maurya, D. (2019). Extraction of association rule mining using apriori algorithm with wolf search optimisation in R programming. International Journal of Recent Technology and Engineering, 8(2 Special Issue 7), 504–507. https://doi.org/10.35940/ijrte.B1094.0782S719

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