通过机器学习预测中国东北地区市场的钢材价格指数

Bingzi Jin, Xiaojie Xu
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引用次数: 0

摘要

长期以来,商品价格预测一直是投资者和政府的重要依赖。本研究探讨了预测 2010 年 1 月 1 日至 2021 年 4 月 15 日中国东北市场每日区域钢材价格指数这一具有挑战性的课题。对这一重要商品价格指标的预测在文献中尚未得到足够重视。所使用的预测模型是高斯过程回归,该模型是通过交叉验证和贝叶斯优化的混合方法进行训练的。建立的模型精确预测了 2019 年 1 月 8 日至 2021 年 4 月 15 日期间的价格指数,样本外相对均方根误差为 0.5432%。投资者和政府官员可以利用已建立的模型来研究定价和做出判断。在使用这些模型所建议的价格趋势参考数据时,预测结果有助于创建可比较的商品价格指数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predictions of steel price indices through machine learning for the regional northeast Chinese market

Predictions of steel price indices through machine learning for the regional northeast Chinese market

Projections of commodity prices have long been a significant source of dependence for investors and the government. This study investigates the challenging topic of forecasting the daily regional steel price index in the northeast Chinese market from January 1, 2010, to April 15, 2021. The projection of this significant commodity price indication has not received enough attention in the literature. The forecasting model that is used is Gaussian process regressions, which are trained using a mix of cross-validation and Bayesian optimizations. The models that were built precisely predicted the price indices between January 8, 2019, and April 15, 2021, with an out-of-sample relative root mean square error of 0.5432%. Investors and government officials can use the established models to study pricing and make judgments. Forecasting results can help create comparable commodity price indices when reference data on the price trends suggested by these models are used.

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