Wholesale price forecasts of green grams using the neural network

Bingzi Jin, Xiaojie Xu
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Abstract

PurposeAgriculture commodity price forecasts have long been important for a variety of market players. The study we conducted aims to address this difficulty by examining the weekly wholesale price index of green grams in the Chinese market. The index covers a ten-year period, from January 1, 2010, to January 3, 2020, and has significant economic implications.Design/methodology/approachIn order to address the nonlinear patterns present in the price time series, we investigate the nonlinear auto-regressive neural network as the forecast model. This modeling technique is able to combine a variety of basic nonlinear functions to approximate more complex nonlinear characteristics. Specifically, we examine prediction performance that corresponds to several configurations across data splitting ratios, hidden neuron and delay counts, and model estimation approaches.FindingsOur model turns out to be rather simple and yields forecasts with good stability and accuracy. Relative root mean square errors throughout training, validation and testing are specifically 4.34, 4.71 and 3.98%, respectively. The results of benchmark research show that the neural network produces statistically considerably better performance when compared to other machine learning models and classic time-series econometric methods.Originality/valueUtilizing our findings as independent technical price forecasts would be one use. Alternatively, policy research and fresh insights into price patterns might be achieved by combining them with other (basic) prediction outputs.
利用神经网络预测青克的批发价格
目的长期以来,农产品价格预测对各种市场参与者来说都非常重要。我们开展的研究旨在通过研究中国市场每周的青克批发价格指数来解决这一难题。该指数涵盖从 2010 年 1 月 1 日到 2020 年 1 月 3 日的十年期,具有重要的经济意义。设计/方法/途径为了解决价格时间序列中存在的非线性模式,我们研究了非线性自回归神经网络作为预测模型。这种建模技术能够结合各种基本的非线性函数来逼近更复杂的非线性特征。具体来说,我们考察了数据分割比率、隐藏神经元和延迟计数以及模型估计方法等几种配置所对应的预测性能。在整个训练、验证和测试过程中,相对均方根误差分别为 4.34%、4.71% 和 3.98%。基准研究的结果表明,与其他机器学习模型和经典的时间序列计量经济学方法相比,神经网络在统计上具有更好的性能。另外,将我们的研究结果与其他(基本)预测结果相结合,也可用于政策研究和对价格模式的新认识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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