How do seasonal, significant events, and policies affect China's REE export prices? Based on deep learning perspective

IF 10.2 2区 经济学 0 ENVIRONMENTAL STUDIES
Qing Guo, Zishan Mai
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引用次数: 0

Abstract

This paper aims to accurately predict China's rare earth export prices and reveal the impact of variables such as seasonality, significant events, finance, and supply and demand on rare earth price volatility. Daily datasets of light and heavy rare earths from 2011 to 2023 were used, and the Tree-structured Parzen Estimator-Temporal Fusion Transformer model was employed to predict rare earth prices. Complete Ensemble Empirical Mode Decomposition with Adaptive Noise and partial dependence plots were used to reveal the factors affecting price volatility. The following conclusions were drawn: (1) The Tree-structured Parzen Estimator-Temporal Fusion Transformer deep learning model can provide more accurate rare earth price prediction information; (2) Light rare earth prices are more susceptible to cyclical influences, while heavy rare earth prices are more affected by significant events. The outbreak of COVID-19 has had a long-term impact on both light and heavy rare earth prices; (3) The fluctuations in heavy rare earth prices are mainly influenced by financial factors, while the fluctuations in light rare earth prices are influenced by multiple factors such as finance, supply and demand, and macroeconomics; (4) An increase in resource tax rates may lead to a decrease in rare earth prices, while an increase in restrictions on rare earth mining may lead to an increase in rare earth prices.

季节性、重大事件和政策如何影响中国的稀土出口价格?基于深度学习视角
本文旨在准确预测中国稀土出口价格,揭示季节性、重大事件、金融、供求等变量对稀土价格波动的影响。本文采用 2011 年至 2023 年轻质稀土和重质稀土的每日数据集,并采用树状结构 Parzen Estimator-Temporal Fusion Transformer 模型预测稀土价格。利用带有自适应噪声的完全集合经验模式分解和部分依存图揭示了影响价格波动的因素。得出以下结论:(1)树状结构的 Parzen Estimator-Temporal Fusion Transformer 深度学习模型可以提供更准确的稀土价格预测信息;(2)轻稀土价格更容易受到周期性影响,而重稀土价格更容易受到重大事件的影响。COVID-19 的爆发对轻稀土和重稀土价格都产生了长期影响;(3)重稀土价格波动主要受金融因素影响,而轻稀土价格波动受金融、供需、宏观经济等多重因素影响;(4)资源税率的提高可能导致稀土价格下降,而稀土开采限制的增加可能导致稀土价格上涨。
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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来源期刊
Resources Policy
Resources Policy ENVIRONMENTAL STUDIES-
CiteScore
13.40
自引率
23.50%
发文量
602
审稿时长
69 days
期刊介绍: Resources Policy is an international journal focused on the economics and policy aspects of mineral and fossil fuel extraction, production, and utilization. It targets individuals in academia, government, and industry. The journal seeks original research submissions analyzing public policy, economics, social science, geography, and finance in the fields of mining, non-fuel minerals, energy minerals, fossil fuels, and metals. Mineral economics topics covered include mineral market analysis, price analysis, project evaluation, mining and sustainable development, mineral resource rents, resource curse, mineral wealth and corruption, mineral taxation and regulation, strategic minerals and their supply, and the impact of mineral development on local communities and indigenous populations. The journal specifically excludes papers with agriculture, forestry, or fisheries as their primary focus.
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