ARTICLE
TITLE

Implementation of Association Rule Mining Based on Frequent Pattern Growth Algorithms for Sales Recommendations

SUMMARY

The level of competition and complexity of sales problems at retail companies, requires each retail company to be able to compete with other companies. One thing that can be done is through making decisions regarding sales that are more appropriate and effective. The amount of transactional data on retail company sales can be extracted useful information. The method that can be used to gather information is through the application of association rule mining. Association Rule Mining is a data mining method that focuses on transaction patterns by extracting associations or relationships of events. The market basket in a computerized retail company is the best way to provide scientific decision support support by determining the relationship between items purchased simultaneously in each transaction. FP-growth algorithm is used to determine the set of datasets that most often appear (frequent itemset) in a group of data. This research resulted in a minimum support value of 0.1% and a minimum value of 60% confidence in the number of rules produced amounted to 116457, a minimum value of 70% confidence in the number of rules produced amounted to 84086, and a minimum value of 80% confidence in the number of rules generated amounted to 48623 from the data processed in a number 22191. The results of this rule can be used for product marketing strategies. The minimum value of support is 0.1% where the greater the minimum value of confidence will result in fewer rules.

 Articles related

Tri Suwarno, Teduh Dirgahayu, Hendrik Hendrik    

Merdeka Belajar Kampus Merdeka (MBKM) is one of the policies of the Minister of Education and Culture of the Republic of Indonesia. In this program, students are given the freedom to take courses outside the program of study so that they can achieve lear... see more


Arfhan Prasetyo, Heru Purwanto, Ishak Kholil    

Ordering products from home-based trading businesses have not utilized data mining algorithms that can help analyze transaction data to optimize product order transactions and also manage inventory on raw materials from products by reducing a lot of left... see more


Mikhail L. Zymbler    

Frequent itemset mining leads to the discovery of associations and correlations among items in large transactional databases. Apriori is a classical frequent itemset mining algorithm, which employs iterative passes over database combining with generation... see more


Muhammad Zulfahmi Nasution    

Abstract - School is one of the facilities in the implementation and development of education. SMK Raksana 2 Medan is one of the best schools in North Sumatra. With differing abilities, students differ in their level of achievement. There are several fac... see more


Peter Dorcak, Peter Markovic, Nella Svetozarovova, Frantisek Pollak    

Performance management at individual level requires a systematic approach for evaluating the work and expectations, supporting such efforts of employees by providing evaluation and feedback in the form of the subsequent implementation of the appropriate ... see more