Perancangan dan Pembuatan Modul Data Mining Market Basket Analysis pada Odoo dengan Studi Kasus Supermarket X
Keywords:
Perusahaan Keluarga, Kriteria Suksesor, Perencanaan Suksesi.Abstract
Odoo Enterprise Resource Planning (ERP) system storing company’s transaction data. However, Odoo doesn't have a module for managing data. It takes a module for managing data into useful information.
Based on the above problems, a module for data mining Market Basket Analysis is being designed. This module uses FP-Growth algorithm by utilizing the sales transaction data.
For the testing, this module using data from X Supermarket. The final result of this module is an association rule from data mining process. The rule is shown in the form of narrative and graphics making them easier to understandReferences
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