Forecasting commodity prices: empirical evidence using deep learning tools

被引:19
作者
Ben Ameur, Hachmi [1 ]
Boubaker, Sahbi [2 ]
Ftiti, Zied [3 ]
Louhichi, Wael [4 ]
Tissaoui, Kais [5 ,6 ]
机构
[1] Omnes Educ, INSEEC Grande Ecole, Paris, France
[2] Univ Jeddah, Coll Comp Sci & Engn, Dept Comp & Network Engn, Jeddah 21959, Saudi Arabia
[3] EDC Paris Business Sch, OCRE Lab, Paris, France
[4] ESSCA Sch Management, Paris, France
[5] Univ Hail, Appl Coll, POB 2440, Hail, Saudi Arabia
[6] Univ Tunis El Manar, Fac Econ Sci & Management Tunis, Int Finance Grp, Tunis, Tunisia
关键词
Commodity markets; Forecasting; Deep learning; Bloomberg Commodity Index; Performance metrics; RESOURCE PRICES; UNCERTAINTY; VOLATILITY; CYCLES;
D O I
10.1007/s10479-022-05076-6
中图分类号
C93 [管理学]; O22 [运筹学];
学科分类号
070105 ; 12 ; 1201 ; 1202 ; 120202 ;
摘要
Since the last two decades, financial markets have exhibited several transformations owing to recurring crises episodes that has led to the development of alternative assets. Particularly, the commodity market has attracted attention from investors and hedgers. However, the operational research stream has also developed substantially based on the growth of the artificial intelligence field, which includes machine learning and deep learning. The choice of algorithms in both machine learning and deep learning is case-sensitive. Hence, AI practitioners should first attempt solutions related to machine learning algorithms, and if such solutions are unsatisfactory, they must apply deep learning algorithms. Using this perspective, this study aims to investigate the potential of various deep learning basic algorithms for forecasting selected commodity prices. Formally, we use the Bloomberg Commodity Index (noted by the Global Aggregate Index) and its five component indices: Bloomberg Agriculture Subindex, Bloomberg Precious Metals Subindex, Bloomberg Livestock Subindex, Bloomberg Industrial Metals Subindex, and Bloomberg Energy Subindex. Based on daily data from January 2002 (the beginning wave of commodity markets' financialization) to December 2020, results show the effectiveness of the Long Short-Term Memory method as a forecasting tool and the superiority of the Bloomberg Livestock Subindex and Bloomberg Industrial Metals Subindex for assessing other commodities' indices. These findings is important in term for investors in term of risk management as well as policymakers in adjusting public policy, especially during Russian-Ukrainian war.
引用
收藏
页码:349 / 367
页数:19
相关论文
共 50 条
  • [41] Wavelet and Deep Learning Framework for Predicting Commodity Prices Under Economic and Financial Uncertainty
    Doroshenko, Lyubov
    Mastroeni, Loretta
    Mazzoccoli, Alessandro
    MATHEMATICS, 2025, 13 (08)
  • [42] Forecasting Stock Prices: A Comparative Analysis of Machine Learning, Deep Learning, and Statistical Approaches
    Gajjar, Kimi
    Choksi, Ami Tusharkant
    PROCEEDINGS OF THE 5TH INTERNATIONAL CONFERENCE ON DATA SCIENCE, MACHINE LEARNING AND APPLICATIONS, VOL 1, ICDSMLA 2023, 2025, 1273 : 179 - 192
  • [43] Deep learning for volatility forecasting in asset management
    Petrozziello, Alessio
    Troiano, Luigi
    Serra, Angela
    Jordanov, Ivan
    Storti, Giuseppe
    Tagliaferri, Roberto
    La Rocca, Michele
    SOFT COMPUTING, 2022, 26 (17) : 8553 - 8574
  • [44] Correlation evidence in the dynamics of agricultural commodity prices
    Boroumand, Raphael Homayoun
    Goutte, Stephane
    Porcher, Simon
    Porcher, Thomas
    APPLIED ECONOMICS LETTERS, 2014, 21 (17) : 1238 - 1242
  • [45] Forecasting Cryptocurrency Prices Using LSTM, GRU, and Bi-Directional LSTM: A Deep Learning Approach
    Seabe, Phumudzo Lloyd
    Moutsinga, Claude Rodrigue Bambe
    Pindza, Edson
    FRACTAL AND FRACTIONAL, 2023, 7 (02)
  • [46] A combination method for interval forecasting of agricultural commodity futures prices
    Xiong, Tao
    Li, Chongguang
    Bao, Yukun
    Hu, Zhongyi
    Zhang, Lu
    KNOWLEDGE-BASED SYSTEMS, 2015, 77 : 92 - 102
  • [47] Deep learning for volatility forecasting in asset management
    Alessio Petrozziello
    Luigi Troiano
    Angela Serra
    Ivan Jordanov
    Giuseppe Storti
    Roberto Tagliaferri
    Michele La Rocca
    Soft Computing, 2022, 26 : 8553 - 8574
  • [48] Forecasting stock prices with commodity prices: New evidence from Feasible Quasi Generalized Least Squares (FQGLS) with non-linearities
    Fasanya, Ismail O.
    Adekoya, Oluwasegun
    Sonola, Ridwan
    ECONOMIC SYSTEMS, 2023, 47 (02)
  • [49] Cryptocurrency Investments Forecasting Model Using Deep Learning Algorithms
    Enco, Leonardo
    Mederos, Alexander
    Paipay, Alejandro
    Pizarro, Daniel
    Marecos, Hernan
    Ticona, Wilfredo
    ARTIFICIAL INTELLIGENCE ALGORITHM DESIGN FOR SYSTEMS, VOL 3, 2024, 1120 : 202 - 217
  • [50] Forecasting Geomagnetic Storm Disturbances and Their Uncertainties Using Deep Learning
    Conde, D.
    Castillo, F. L.
    Escobar, C.
    Garcia, C.
    Garcia, J. E.
    Sanz, V.
    Zaldivar, B.
    Curto, J. J.
    Marsal, S.
    Torta, J. M.
    SPACE WEATHER-THE INTERNATIONAL JOURNAL OF RESEARCH AND APPLICATIONS, 2023, 21 (11):