Corn cash-futures basis forecasting via neural networks

被引:0
作者
Xiaojie Xu
Yun Zhang
机构
[1] North Carolina State University,
来源
Advances in Computational Intelligence | 2023年 / 3卷 / 2期
关键词
Corn; Cash-futures basis; Forecasting; Neural network; Machine learning;
D O I
10.1007/s43674-023-00054-2
中图分类号
学科分类号
摘要
Cash-futures basis forecasting represents a vital concern for various market participants in the agricultural sector, which has been rarely explored due to limitations on data and traditional econometric methods. The current study explores usefulness of the nonlinear autoregressive neural network technique for the forecasting problem in a unique and proprietary data set of daily corn cash-futures basis across nearly five-hundred cash markets from sixteen most important harvest states in the United States over a 5-year period. Through investigations of various model settings across the hidden neuron, delay, data splitting ratio, and algorithm, a chosen model with five delays and twenty hidden neurons is reached, trained using the Levenberg–Marquardt algorithm and data splitting ratio of 70% vs. 15% vs. 15% for training, validation, and testing. This model results in accurate and stable performance across the cash markets explored, which illustrates usefulness of the machine learning technique for corn cash-futures basis forecasting. Particularly, the model leads to average relative root mean square errors (RRMSEs) of 9.97%, 8.51%, and 9.64% for the training, validation, and testing phases, respectively, and the average RRMSE of 9.83% for the overall sample across all cash markets. Results here might be used as standalone technical forecasts or combined with fundamental forecasts for forming perspectives of cash-futures basis trends and carrying out policy analysis. The empirical framework here is easy to implement, which is an essential consideration to many decision makers, and has potential to be generalized for forecasting cash-futures basis of other commodities.
引用
收藏
相关论文
共 50 条
  • [41] Forecasting of Wind Speed Using Feature Selection and Neural Networks
    Kumar, Senthil P.
    Lopez, Daphne
    INTERNATIONAL JOURNAL OF RENEWABLE ENERGY RESEARCH, 2016, 6 (03): : 833 - 837
  • [42] Weather Forecasting Using Radial Basis Function Neural Network in Warangal, India
    Veeramsetty, Venkataramana
    Kiran, Prabhu
    Sushma, Munjampally
    Salkuti, Surender Reddy
    URBAN SCIENCE, 2023, 7 (03)
  • [43] Diphtheria Case Number Forecasting using Radial Basis Function Neural Network
    Anggraeni, Wiwik
    Nandika, Dina
    Mahananto, Faizal
    Sudiarti, Yeyen
    Fadhilla, Cut Alna
    2019 3RD INTERNATIONAL CONFERENCE ON INFORMATICS AND COMPUTATIONAL SCIENCES (ICICOS 2019), 2019,
  • [44] Improved streamflow forecasting using self-organizing radial basis function artificial neural networks
    Moradkhani, H
    Hsu, K
    Gupta, HV
    Sorooshian, S
    JOURNAL OF HYDROLOGY, 2004, 295 (1-4) : 246 - 262
  • [45] Short-Term Load Forecasting in Distribution Substation Using Autoencoder and Radial Basis Function Neural Networks: A Case Study in India
    Veeramsetty, Venkataramana
    Konda, Prabhu Kiran
    Dongari, Rakesh Chandra
    Salkuti, Surender Reddy
    COMPUTATION, 2025, 13 (03)
  • [46] Using Deep Neural Networks for Forecasting Cell Congestion on LTE Networks: A Simple Approach
    Torres, Pedro
    Marques, Hugo
    Marques, Paulo
    Rodriguez, Jonathan
    COGNITIVE RADIO ORIENTED WIRELESS NETWORKS, 2018, 228 : 276 - 286
  • [47] Uncertainty-Aware QoT Forecasting in Optical Networks with Bayesian Recurrent Neural Networks
    Di Cicco, Nicola
    Talpini, Jacopo
    Ibrahimi, Memedhe
    Savi, Marco
    Tornatore, Massimo
    ICC 2023-IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS, 2023, : 441 - 446
  • [48] Machine learning with parallel neural networks for analyzing and forecasting electricity demand
    Chen, Yi-Ting
    Sun, Edward W.
    Lin, Yi-Bing
    COMPUTATIONAL ECONOMICS, 2020, 56 (02) : 569 - 597
  • [49] Forecasting the concentration of the components of the particulate matter in Poland using neural networks
    Jarosław Bernacki
    Environmental Science and Pollution Research, 2025, 32 (14) : 9179 - 9212
  • [50] FORECASTING ANALYSIS OF CONSUMER GOODS DEMAND USING NEURAL NETWORKS AND ARIMA
    Dhini, Arian
    Surjandari, Isti
    Riefqi, Muhammad
    Puspasari, Maya Arlini
    INTERNATIONAL JOURNAL OF TECHNOLOGY, 2015, 6 (05) : 872 - 880