ANALYSIS OF THE LSTM MODEL ON THE DEMAND PATTERNS OF INDONESIAN TRADITIONAL COOKIES IN ONLINE MARKETPLACES

Luke Farrer Azsyams; Alshaf Pebrianggara; Istian Kriya Almanfaluti

Detail Publikasi

Jurnal: International Journal of Artificial Intelligence for Digital Marketing

ISSN: 3047-2903

Volume: 2, Issue: 10

Tanggal Terbit: 25 October 2025

Abstrak

Objective:  This study aims to analyze the application of the Long Short-Term Memory (LSTM) model in predicting demand patterns for Indonesian culinary products in online marketplaces. Method: Using monthly sales data from January 2022 to May 2024, the model was trained and evaluated with the metrics Mean Squared Error (MSE), Root Mean Squared Error (RMSE), and R². Results: The results showed an MSE of 899.70, an RMSE of 30.00, and an R² value of 0.09, indicating that the model has limitations in capturing variations in historical data. Nevertheless, LSTM still has potential as a forecasting tool for MSME entrepreneurs in decision-making related to inventory management, production planning, and marketing strategies. Novelty: Future research is recommended to expand the dataset, incorporate external factors such as seasonal trends and promotions, and explore hybrid approaches to improve prediction accuracy.


Kata Kunci
Demand prediction LSTM Time series forecasting Nusantara culinary MSMEs
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