Penerapan Metode Association Rule Untuk Menganalisa Pola Pemakaian Bahan Kimia Di Laboratorium Menggunakan Algoritma FP-Growth (Studi Kasus di Laboratorium Kimia PT. PLN (Persero) Sektor Pembangkitan Belawan Medan)

Buyung Solihin Hasugian

Abstract


The pattern of using chemicals in the laboratory of PT. PLN (Persero) Sektor Pembangkitan Belawan Medan is not only to find out what chemicals are used but also to find out the amount of chemicals left so that laboratory officials can properly manage the use of these chemicals. One appropriate way to determine the pattern of use of these chemicals is to use data mining techniques. The Data Mining technique used in this case is the FP-Growth Algorithm. FP-Growth is an alternative algorithm that can be used to determine the most frequent set of data in a data set. The study was conducted using several variables, namely the date and chemicals used. The results of this study are in the form of a chemical usage pattern which is processed using software, namely implementing the FP-Growth algorithm using the concept of FP-Tree development in searching for Frequent Itemset.

 

Keywords: Data Mining, Association Rules, Frequent Itemset, FP-Growth

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DOI: http://dx.doi.org/10.30829/algoritma.v3i2.6437

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Algoritma: Jurnal Ilmu Komputer dan Informatika

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