A Comparative Simulation Study of Classical and Machine Learning Techniques for Forecasting Time Series Data

被引:3
|
作者
Iaousse, Mbarek [1 ]
Jouilil, Youness [2 ]
Bouincha, Mohamed [3 ]
Mentagui, Driss [2 ]
机构
[1] Hassan II Univ Casablanca, Lab C3S, Casablanca, Morocco
[2] Ibn Tofail Univ Kenitra, Fac Sci, Dept Math, Kenitra, Morocco
[3] Mohamed V Univ Rabat, Fac Legal Econ & Social Sci Sale, Rabat, Morocco
关键词
machine learning; time series forecasting; classical approaches; forecasting;
D O I
10.3991/ijoe.v19i08.39853
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
This manuscript presents a simulation comparison of statistical classical methods and machine learning algorithms for time series forecasting notably the ARIMA model, K-Nearest Neighbors (KNN), The Support Vector Regression (SVR), and Long-Short Term Memory (LSTM). The performance of the models was evaluated using different metrics especially Mean Squared Error (MSE), Mean Absolute Error (MAE), Median Absolute Error (Median AE), and Root Mean Squared Error (RMSE). The results of the simulations approve that the KNN and LSTM algorithms have better accuracy than the others models' forecasting notably in the medium and long term. Hence, in the medium and long term, ML models are so powerful on big datasets. However, Machine learning architectures outperform ARIMA for shorter-term predictions. Thus, ARIMA is most appropriate in the case of univariate small data sets, where deep learning algorithms are not yet at their best.
引用
收藏
页码:56 / 65
页数:10
相关论文
共 50 条
  • [41] Forecasting of Solar Irradiances using Time Series and Machine Learning Models: A Case Study from India
    Sarita Sheoran
    Singh R.S.
    Pasari S.
    Kulshrestha R.
    Applied Solar Energy (English translation of Geliotekhnika), 2022, 58 (01): : 137 - 151
  • [42] Forecasting time series combining machine learning and Box-Jenkins time series
    Montañés, E
    Quevedo, JR
    Prieto, MM
    Menéndez, CO
    ADVANCES IN ARTIFICIAL INTELLIGENCE - IBERAMIA 2002, PROCEEDINGS, 2002, 2527 : 491 - 499
  • [43] AN EFFICIENT HYBRID MACHINE LEARNING METHOD FOR TIME SERIES STOCK MARKET FORECASTING
    Ebadati, O. M. E.
    Mortazavi, M. T.
    NEURAL NETWORK WORLD, 2018, 28 (01) : 41 - 55
  • [44] A Comparative Study of Neural-Network & Fuzzy Time Series Forecasting Techniques - Case Study: Wheat Production Forecasting
    Pandey, Adesh Kumar
    Sinha, A. K.
    Srivastava, V. K.
    INTERNATIONAL JOURNAL OF COMPUTER SCIENCE AND NETWORK SECURITY, 2008, 8 (09): : 382 - 387
  • [45] Machine Learning Techniques for Air Quality Forecasting and Study on Real-Time Air Quality Monitoring
    Hable-Khandekar, Varsha
    Srinath, Pravin
    2017 INTERNATIONAL CONFERENCE ON COMPUTING, COMMUNICATION, CONTROL AND AUTOMATION (ICCUBEA), 2017,
  • [46] Machine Learning and Deep Learning Techniques for Residential Load Forecasting: A Comparative Analysis
    Shabbir, Noman
    Kutt, Lauri
    Raja, Hadi A.
    Ahmadiahangar, Roya
    Rosin, Argo
    Husev, Oleksandr
    2021 IEEE 62ND INTERNATIONAL SCIENTIFIC CONFERENCE ON POWER AND ELECTRICAL ENGINEERING OF RIGA TECHNICAL UNIVERSITY (RTUCON), 2021,
  • [47] Machine learning applications in hierarchical time series forecasting: Investigating the impact of promotions
    Abolghasemi, Mahdi
    Tarr, Garth
    Bergmeir, Christoph
    INTERNATIONAL JOURNAL OF FORECASTING, 2024, 40 (02) : 597 - 615
  • [48] Vector SHAP Values for Machine Learning Time Series Forecasting
    Choi, Ji Eun
    Shin, Ji Won
    Shin, Dong Wan
    JOURNAL OF FORECASTING, 2025, 44 (02) : 635 - 645
  • [49] DeepTSF: Codeless machine learning operations for time series forecasting
    Pelekis, Sotiris
    Pountridis, Theodosios
    Kormpakis, Georgios
    Lampropoulos, George
    Karakolis, Evangelos
    Mouzakitis, Spiros
    Askounis, Dimitris
    SOFTWAREX, 2024, 27
  • [50] Wind Speed Forecasting at Different Time Scales Using Time Series and Machine Learning Models
    Sheoran S.
    Shukla S.
    Pasari S.
    Singh R.S.
    Kulshrestha R.
    Applied Solar Energy (English translation of Geliotekhnika), 2022, 58 (05): : 708 - 721