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Pattern Recognition of Customer Spending Habits Using Apriori Algorithms in DataMining as an Inventory Strategy

Arief, Jananto and Yohanes, Suhari and Rara, Sriartati Rejeki and Bambang, Sudiyatno Pattern Recognition of Customer Spending Habits Using Apriori Algorithms in DataMining as an Inventory Strategy. Publikasi Ilmiah.

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Abstract

The readiness of product inventory is very important, product shortages related to other products can make buyers disappointed and then cancel to buy products that were previously planned to be purchased at once. Sellers can experience a decrease in the number of sales to revenue. In this case, the seller needs to know the pattern of customer habits when making purchases by going through sales transaction data that has occurred. Association techniques can be used to analyze the pattern of interrelationships between items in transaction events. With the a priori algorithm as a popular association algorithm, the pattern of sales transaction data can be analyzed through the research stage. From the implementation of the algorithm with 1063 transaction data using 10% min- support and 75% min-confidence resulting in 4 association rules where 1) if you buy "kacer" and "love bird" you will buy "pentet" as much as 17% support, 2) if you buy "magpie" and "love bird" will also buy "pentet" afl 6%, 3) if you buy "kacer" and "magpie" then you will buy "pentet" at 14%, 4) Br" buy "anis" you will buy "pentet" of 11% with a confidence level of 76%, 81%, 84%, 77%, respectively. So, there are 5 main items that play a strong role in the rule that must be considered. Sellers can use the resulting item relationship patterns as consideration in managing inventory and structuring the items sold.

Item Type: Article
Subjects: Q Science > Q Science (General)
Faculty / Institution: Fakultas Teknologi Informasi
Depositing User: Fakultas Ekonomi
Date Deposited: 13 Feb 2023 02:19
Last Modified: 13 Feb 2023 02:19
URI: https://eprints.unisbank.ac.id/id/eprint/9125

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