Association Rules Mining on Retail Data

The development in information technologies, artificial intelligence, and data mining benefits people in many areas. With this development, data stacks are formed through the storage of ever-increasing data. Accessing useful information from the data heaps is a very difficult process. This has led t...

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Veröffentlicht in:Ekoist journal of econometrics and statistics 2022-12 (37), p.199-211
Hauptverfasser: Dağaslanı, Hatice, Deniz Başar, Özlem
Format: Artikel
Sprache:eng
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Zusammenfassung:The development in information technologies, artificial intelligence, and data mining benefits people in many areas. With this development, data stacks are formed through the storage of ever-increasing data. Accessing useful information from the data heaps is a very difficult process. This has led to the emergence and development of the concept of data mining. In this study, the relationship between the categories of the products sold by a company in the retail sector operating in Turkey was analyzed using the Apriori algorithm, which is an algorithm used in data mining. In the application, one-day sales data of the company was used. The data obtained was provided to extract the association rules with the help of Python. In this way, the purchasing habits of customers were determined by finding meaningful relationships between products using association rules.
ISSN:2651-396X
2651-396X
1308-7215
DOI:10.26650/ekoist.2022.37.1145052