2008年金融危机对油价的影响

N. Sehgal, Krishan Kumar Pandey
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引用次数: 4

摘要

40多年来,地缘政治和经济事件对原油市场产生了巨大影响。油价连续几年稳步上涨,2008年7月达到每桶145美元的历史高点。此外,到2008年底,油价暴跌至每桶43美元。有必要确定适当的特征(因素)来解释石油市场在繁荣和低迷时期的特征。特征选择可以帮助识别金融危机前后最具信息量和影响力的输入变量。本研究使用MI3算法的扩展版本,即I2MI2算法,结合一般回归神经网络作为预测引擎,来检验所选特征的解释能力及其对油价驱动的贡献。该研究使用了从提出的方法中选择的一个月和十二个月的预测范围的特征。拟议方法的预测结果优于环境影响评估署STEO的估计结果。结果表明,在危机前,储备和投机是主要参与者,2008年全球金融危机导致整体机制被打破。新兴经济体(中国)的贡献成为解释油价走向的重要变量。危机前后epi和CPI仍然是经济增长的基础,而非oecd消费的影响在危机后上升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aftermath of 2008 financial crisis on oil prices
Geopolitical and economic events had strong impact on crude oil markets for over 40 years. Oil prices steadily rose for several years and in July 2008 stood at a record high of $145 per barrel. Further, it plunged to $43 per barrel by end of 2008. There is need to identify appropriate features (factors) explaining the characteristics of oil markets during booming and downturn period. Feature selection can help in identifying the most informative and influential input variables before and after financial crisis. The study used an extended version of MI3 algorithm i.e. I2MI2 algorithm together with general regression neural network as forecasting engine to examine the explanatory power of selected features and their contribution in driving oil prices. The study used features selected from proposed methodology for one-month ahead and twelve-month ahead forecast horizon. The forecast from the proposed methodology outperformed in comparison to EIA's STEO estimates. Results shows that reserves and speculations were main players before the crisis and the overall mechanism was broken due to 2008 global financial crisis. The contribution of emerging economy (China) emerged as important variable in explaining the directions of oil prices. EPPI and CPI remain the building blocks before and after crisis while influence of Non-OECD consumption rises after the crisis.
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