Analisis Penjualan dan Pelanggan Toko Swalayan di Kediri Menggunakan Market Basket Analysis dan Machine Learning
Abstract
Inventory management and sales analysis in convenience stores
are often handled manually, making it difficult for store owners to
understand customer purchasing patterns and make effective
operational decisions. This study analyzes transaction and
inventory data from a convenience store in Kediri by combining
Market Basket Analysis and machine learning to produce more
measurable, actionable insights.
The methods include FP-Growth to discover product associations,
Decision Tree to predict inventory status (restock/overstock),
K-Means to segment products, and Random Forest Regression to
forecast monthly profit. The results show that consistent
purchasing patterns can support bundling and product
arrangement recommendations, while the classification,
clustering, and regression models help improve stock monitoring,
wholesale strategy, and financial planning. All outputs are
implemented in an interactive dashboard to support practical use
by the store owner.