基于机器学习模型的新冠肺炎时代商品价格比较

Sena Alparslan, T. Uçar
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引用次数: 0

摘要

在过去的经济危机中,黄金、白银和金属等大宗商品一直被视为避风港。这种情况增加了对商品的兴趣。由于COVID-19大流行,隔离决定和预防措施导致股市和消费者活动的经济放缓。这种经济停滞导致了2020年2月开始的新冠肺炎经济衰退。由于新冠肺炎病例数量的增加,实物买卖交易的困难表明,大宗商品产品可以成为一种安全的投资工具。基于机器学习方法在商品价格预测中越来越重要的事实,本研究的主要目标是了解即使在特殊情况下机器学习方法对商品价格预测是否有意义。为了衡量商品的价格波动,从Borsa İstanbul获得的数据集被分为COVID-19前和COVID-19时期。本文使用了2018年7月至2021年10月期间黄金和白银商品的每日价格,2018年7月是在新冠肺炎经济衰退之前。将机器学习模型的性能与MAE、MAPE和RMSE指标进行比较。
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Comparison of commodity prices by using machine learning models in the COVID-19 era
Commodity products such as gold, silver, and metal have been seen as safe havens in past economic crises. This situation increases the interest in commodity products. Due to the COVID-19 pandemic, quarantine decisions and precautions have caused an economic slowdown in stock markets and consumer activities. This inactivity in the economy has led to the COVID-19 recession that started in February 2020. Because of the increase in the number of COVID-19 cases, the difficulty of physical buying-selling transactions has shown that commodity products can be a safe investment tool. Based on the fact that machine learning approaches gained importance in commodity price prediction, the main goal of this study is to understand whether machine learning methods are meaningful for commodity price prediction even in extraordinary situations. To measure commodities’ price volatility, a data set obtained from Borsa İstanbul is separated into pre-COVID-19 and COVID-19 periods. Daily prices for gold and silver commodities, from July 2018, which is before the ongoing COVID-19 recession, to October 2021 are used. The performances of the machine learning models were compared with MAE, MAPE, and RMSE metrics.
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