A Hybrid Approach for Sales Forecasting: Combining Deep Learning and Time Series Analysis

被引:1
作者
Boukrouh, I. [1 ]
Idiri, S. [1 ]
Tayalati, F. [1 ]
Azmani, A. [1 ]
Bouhsaien, L. [1 ]
机构
[1] Abdelmalek Essaadi Univ, Intelligent Automat & BioMedGen Lab, FST Tangier, Tetouan, Morocco
来源
INTERNATIONAL JOURNAL OF ENGINEERING | 2025年 / 38卷 / 04期
关键词
Recurrent Neural Network; LSTM; Box-Jenkins; SARIMA; Exponential Smoothing; Holt-Winters; Combined Approach; NEURAL-NETWORKS; PREDICTION; MODEL;
D O I
10.5829/ije.2025.38.04a.16
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Sales forecasting is an essential task for businesses as it enables suppliers to analyze customer preferences, thereby optimizing profits, reducing costs, and minimizing product returns. Confronting the complexities of sales forecasting, this research introduces a new hybrid model for sales forecasting that combines classic time series analysis with advanced deep learning techniques to address the limitations present in existing forecasting models. This model combines Long Short-Term Memory (LSTM), Seasonal Autoregressive Integrated Moving Average (SARIMA), and Triple Exponential Smoothing (Holt-Winters) to capture complex patterns, handle linear trends and seasonal patterns, and emphasize recent sales trends. A comparative analysis using the Mean Absolute Percentage Error (MAPE) metric demonstrates the enhanced performance of the hybrid model over the individual components. The findings indicate that the hybrid model surpasses LSTM, SARIMA, and Holt-Winters models by 9%, 39%, and 43%, respectively. This improvement in forecasting accuracy significantly benefits marketplace management by offering more reliable sales predictions. Applying this model facilitates the prediction of sales for the next 'n' days, informing inventory management, pricing strategies, and promotional planning to optimizeAsales performance.
引用
收藏
页码:859 / 870
页数:12
相关论文
共 45 条
  • [1] Akin M., 2017, Yuzuncu Yil Universitesi Journal of Agricultural Sciences, V27, P252, DOI 10.29133/yyutbd.306798
  • [2] Antonopoulou H., 2023, Emerging Science Journal, V7, P724, DOI [10.28991/ESJ-2023-07-03-04, DOI 10.28991/ESJ-2023-07-03-04]
  • [3] Balal M., 2023, Forecasting solar power generation utilizing machine learning models in Lubbock, DOI DOI 10.28991/ESJ-2023-07-04-02
  • [4] BROEKAERT WF, 1995, PLANT PHYSIOL, V108, P1353, DOI [10.1016/j.envsoft.2012.10.004, 10.1016/j.chiabu.2021.105188, 10.1016/j.biortech.2014.10.140, 10.1016/j.coelec.2021.100721, 10.1016/j.carres.2021.108368, 10.1016/j.eclinm.2021.100771, 10.1016/j.tourman.2012.10.007, 10.1182/blood-2012-08-450627, 10.1016/j.jaap.2012.10.004]
  • [5] Brown R., 1956, Exponential Smoothing for Predicting Demand
  • [6] Single and Multiple Separate LSTM Neural Networks for Multiple Output Feature Purchase Prediction
    Ciric, Milica
    Predic, Bratislav
    Stojanovic, Dragan
    Ciric, Ivan
    [J]. ELECTRONICS, 2023, 12 (12)
  • [7] Deepa K, 2021, Annals of the Romanian Society for Cell Biology, P3928
  • [8] A methodology for coffee price forecasting based on extreme learning machines
    Deina, Carolina
    Prates, Matheus Henrique do Amaral
    Alves, Carlos Henrique Rodrigues
    Martins, Marcella Scoczynski Ribeiro
    Trojan, Flavio
    Stevan Jr, Sergio Luiz
    Siqueira, Hugo Valadares
    [J]. INFORMATION PROCESSING IN AGRICULTURE, 2022, 9 (04) : 556 - 565
  • [9] Equipping Seasonal Exponential Smoothing Models with Particle Swarm Optimization Algorithm for Electricity Consumption Forecasting
    Deng, Changrui
    Zhang, Xiaoyuan
    Huang, Yanmei
    Bao, Yukun
    [J]. ENERGIES, 2021, 14 (13)
  • [10] DISTRIBUTION OF THE ESTIMATORS FOR AUTOREGRESSIVE TIME-SERIES WITH A UNIT ROOT
    DICKEY, DA
    FULLER, WA
    [J]. JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 1979, 74 (366) : 427 - 431