ANALISIS DATA MINING UNTUK MENENTUKAN STRATEGI PENJUALAN PRODUK MENGGUNAKAN ALGORITMA FP-GROWTH (STUDI KASUS : MAZAYA OLEH-OLEH PEKANBARU)
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Date
2023-11
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Publisher
Elfitra
Abstract
Mazaya Souvenir Shop Pekanbaru is a company that operates in the culinary sector to
be ranked first in the largest culinary industry in Pekanbaru, starting from processing,
raw materials, packaging quality and distribution activities. This shop is experiencing
difficulties in determining market strategies, one of which is in arranging products
purchased simultaneously. The aim of this research is to carry out data mining analysis
to determine product sales patterns using the Fp-Growth algorithm. The data used to
carry out calculations using the Fp-Growth algorithm must go through several stages
such as preprocessing the data, determining minimum support and confidence,
determining the frequent itemset header, forming an fp-tree, creating a conditional
pattern base based on the fp-tree, and generating frequent itemsets. In this study, a
minimum support value of 1% and a confidence value of 80% were used. The research
results showed that there were five rules, two frequent itemsets that had a confidence
value of ≥80%, namely the products Risol Mayo Lumer and Talam Durian, Risol Ayam
and Talam Durian, Red velvet and Talam Durian, Talam Durian and Risol Ayam,
Talam Durian and Risol Mayo Lumer.
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Keywords
Data Mining, Fp-Growth, Association Rule, Mazaya Store, Food Products
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