Implementationi of Apriorii and Fp-Growth Algorithms on Car Dealer Parts Sales with Association Rules
DOI:
https://doi.org/10.24815/riwayat.v8i4.193Keywords:
Association rules, Data mining, Spare parts, Apriori algorithm, Fp-growth algorithmAbstract
Data1 mining is the process of discovering1 interesting and useful patterns and relationships1 in large volumes of data to produce1 valuable information. This information can help company leaders make decisions in various business areas. Company leaders can then develop strategies to face competition1 in the business world, one1 of which is the business1 of selling car1 parts. The1 availability of information systems related to car parts purchase transactions can be used to determine the association1 of parts stored1 in thei database.i The collection1 of transaction data1 can then be analyzed1 usingi the data mining1 process with the apriorii and fp-growth algorithms usingi RapidMiner,i which will produce informationi about a set of sparei parts thati are alwaysi purchased togetheri more accurately,i easily, andi quickly. Using thei information generated, managementi can use this informationi as onei of thei inputs in makingi strategici decisions in facing businessi competition,i such as strategiesi for promotional needs, buyer segmentation,i inventory stock,i spare partsi placement, or observing customeri shopping patterns.


