Canola and soybean oil price forecasts via neural networks

Xiaojie Xu, Yun Zhang
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引用次数: 18

Abstract

Forecasts of commodity prices are vital issues to market participants and policy-makers. Those of cooking section oil are of no exception, considering its importance as one of main food resources. In the present study, we assess the forecast problem using weekly wholesale price indices of canola and soybean oil in China during January 1, 2010–January 3, 2020, by employing the non-linear auto-regressive neural network as the forecast tool. We evaluate forecast performance of different model settings over algorithms, delays, hidden neurons, and data splitting ratios in arriving at the final models for the two commodities, which are relatively simple and lead to accurate and stable results. Particularly, the model for the price index of canola oil generates relative root mean square errors of 2.66, 1.46, and 2.17% for training, validation, and testing, respectively, and the model for the price index of soybean oil generates relative root mean square errors of 2.33, 1.96, and 1.98% for training, validation, and testing, respectively. Through the analysis, we show usefulness of the neural network technique for commodity price forecasts. Our results might serve as technical forecasts on a standalone basis or be combined with other fundamental forecasts for perspectives of price trends and corresponding policy analysis.

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基于神经网络的油菜和豆油价格预测
对市场参与者和决策者来说,大宗商品价格预测是至关重要的问题。考虑到食用油作为主要食品资源之一的重要性,食用油也不例外。在本研究中,我们使用非线性自回归神经网络作为预测工具,使用2010年1月1日至2020年1月3日期间中国油菜籽和豆油的周批发价格指数来评估预测问题。我们评估了不同模型设置对算法、延迟、隐藏神经元和数据分割率的预测性能,以得出这两种商品的最终模型,这些模型相对简单,结果准确稳定。特别是,菜籽油价格指数模型在训练、验证和测试中分别产生2.66%、1.46%和2.17%的相对均方根误差,豆油价格指数模型对训练、验证、测试分别产生2.33%、1.96%和1.98%的相对均方误差。通过分析,我们展示了神经网络技术在商品价格预测中的有用性。我们的结果可以作为独立的技术预测,也可以与其他基本预测相结合,用于价格趋势和相应的政策分析。
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