Journal article 298 views
Deep-learning model using hybrid adaptive trend estimated series for modelling and forecasting sales
Md. Iftekharul Alam Efat,
Petr Hajek ,
Mohammad Abedin,
Rahat Uddin Azad,
Md. Al Jaber,
Shuvra Aditya,
Mohammad Kabir Hassan
Annals of Operations Research, Volume: 339, Pages: 297 - 328
Swansea University Author: Mohammad Abedin
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DOI (Published version): 10.1007/s10479-022-04838-6
Abstract
Existing sales forecasting models are not comprehensive and flexible enough to consider dynamic changes and nonlinearities in sales time-series at the store and product levels. To capture different big data characteristics in sales forecasting data, such as seasonal and trend variations, this study...
Published in: | Annals of Operations Research |
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ISSN: | 0254-5330 1572-9338 |
Published: |
Springer Science and Business Media LLC
2024
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Online Access: |
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URI: | https://cronfa.swan.ac.uk/Record/cronfa64231 |
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Abstract: |
Existing sales forecasting models are not comprehensive and flexible enough to consider dynamic changes and nonlinearities in sales time-series at the store and product levels. To capture different big data characteristics in sales forecasting data, such as seasonal and trend variations, this study develops a hybrid model combining adaptive trend estimated series (ATES) with a deep neural network model. ATES is first used to model seasonal effects and incorporate holiday, weekend, and marketing effects on sales. The deep neural network model is then proposed to model residuals by capturing complex high-level spatiotemporal features from the data. The proposed hybrid model is equipped with a feature-extraction component that automatically detects the patterns and trends in time-series, which makes the forecasting model robust against noise and time-series length. To validate the proposed hybrid model, a large volume of sales data is processed with a three-dimensional data model to effectively support business decisions at the product-specific store level. To demonstrate the effectiveness of the proposed model, a comparative analysis is performed with several state-of-the-art sales forecasting methods. Here, we show that the proposed hybrid model outperforms existing models for forecasting horizons ranging from one to 12 months. |
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Keywords: |
Machine learning, Sales forecasting, Big data, Regression model, Deep learning |
College: |
Faculty of Humanities and Social Sciences |
Funders: |
This article was directed by Software Evaluation and Re-Engineering Research Lab (SERER Lab) and supported by the scientific research project of the Czech Sciences Foundation Grant No. 19-15498S. |
Start Page: |
297 |
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328 |