Wavelet Analysis and Energy-Based Measures for Oil-Food Price Relationship as a Footprint of Financialisation Effect

L. Mastroeni, A. Mazzoccoli, Greta Quaresima, P. Vellucci
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引用次数: 7

Abstract

In this paper we exploit the wavelet analysis approach to investigate oil-food price correlation and its determinants in the domains of time and frequency.Wavelet analysis is able to differentiate high frequency from low frequency movements which correspond, respectively, to short and long run dynamics. We show that the significant local correlation between food and oil is only apparent and this is mainly due both to the activity of commodity index investments and, to a lesser extent, to a growing demand from emerging economies.Moreover, the activity of commodity index investments gives evidence of the overall financialisation process. In addition, we employ wavelet entropy to assess the predictability of the time series under consideration at different frequencies. We find that some variables share a similar predictability structure with food and oil.These variables are the ones that move the most along with oil and food. We also introduce a novel measure, the Cross Wavelet Energy Entropy Measure (CWEEM), based on wavelet transformation and information entropy, with the aim of quantifying the intrinsic predictability of food and oil given demand from emerging economies, commodity index investments, financial stress, and global economic activity. The results show that these dynamics are best predicted by global economic activity at all frequencies and by demand from emerging economies and commodity index investments at high frequencies only.
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金融化效应下石油-粮食价格关系的小波分析和基于能量的测度
本文利用小波分析方法研究了石油和粮食价格在时间和频率上的相关性及其决定因素。小波分析能够区分高频和低频运动,分别对应于短期和长期动态。我们表明,食品和石油之间的显著局部相关性只是显而易见的,这主要是由于商品指数投资的活动,以及新兴经济体不断增长的需求(在较小程度上)。此外,大宗商品指数投资活动证明了整个金融化过程。此外,我们利用小波熵来评估时间序列在不同频率下的可预测性。我们发现一些变量与食物和石油有着相似的可预测性结构。这些变量是随着石油和食物变化最大的。我们还引入了一种基于小波变换和信息熵的新测度——交叉小波能量熵测度(Cross Wavelet Energy Entropy measure, CWEEM),旨在量化新兴经济体需求、商品指数投资、金融压力和全球经济活动对食品和石油的内在可预测性。结果表明,所有频率的全球经济活动和新兴经济体的需求以及仅高频的商品指数投资都能最好地预测这些动态。
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