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Linear and nonlinear Granger causality investigation between carbon market and crude oil market: A multi-scale approach

机译:碳市场与原油市场之间的线性和非线性格兰杰因果关系研究:一种多尺度方法

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This paper investigates the causality between carbon market and crude oil market using a multi-scale analysis approach, in which two main steps are involved: multi-scale analysis and causality testing. In multi-scale analysis, bivariate empirical mode decomposition (BEMD) is employed to decompose the two series of market returns at different time-scales. In causality testing, a linear and nonlinear integrated Granger test is formulated to investigate the relationship among each pair of matched components on a similar time-scale. With the European Union emission allowance (EUA) futures and Brent futures as study samples, some interesting findings can be obtained. (1) At the original data level (without multi-scale decomposition), this study finds evidence supporting a neutrality hypothesis, i.e., no Granger causality between the carbon and crude oil markets. (2) On small time-scale (within one week excluding non-work days), the two markets might be uncorrelated and driven by their own respective supply-demand disequilibriums. (3) For medium time-scale (above one week but below one year), there is a strong bi-directional linear and nonlinear spillover effect between the two markets, due to certain extra factors with medium-term effects, e.g., significant events and policy changes. (4) For long time-scale, the long-term trends of the two markets appear an obvious linear relationship. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文使用多尺度分析方法研究碳市场和原油市场之间的因果关系,其中涉及两个主要步骤:多尺度分析和因果关系测试。在多尺度分析中,采用二元经验模式分解(BEMD)分解不同时间尺度的两个系列的市场收益。在因果关系测试中,制定了线性和非线性集成Granger检验,以研究相似时间范围内每对匹配组件之间的关系。以欧盟排放配额(EUA)期货和布伦特期货作为研究样本,可以获得一些有趣的发现。 (1)在原始数据级别(无多尺度分解)下,本研究发现了支持中立性假设的证据,即碳和原油市场之间没有格兰杰因果关系。 (2)在较小的时间范围内(一周之内,不包括非工作日),两个市场可能是不相关的,并且由各自的供需不平衡所驱动。 (3)对于中等时标(一周以上但一年以下),由于某些额外因素具有中期影响,例如重大事件,两个市场之间存在强烈的双向线性和非线性溢出效应和政策变化。 (4)从长远来看,两个市场的长期趋势呈现出明显的线性关系。 (C)2015 Elsevier B.V.保留所有权利。

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