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Modeling and forecasting the volatility of carbon emission market: The role of outliers, time-varying jumps and oil price risk

机译:建模和预测碳排放市场的波动性:异常值,时变和石油价格风险的作用

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The objectives of this study are three-fold. First, we aim to assess whether outliers or extreme observations occur in the European Union Allowance (EUA) data. Second, we examine if time-varying jumps are present in the carbon emission market. Third, we use the crude oil volatility index (OVX) to investigate the effect of oil market uncertainty on the emission price volatility. In order to detect the possible outliers in the EUA market, we employ a standard methodology proposed by Ane et al. (2008) and identify several outliers in the emission data. After spotting and then removing those extreme points, we apply the GARCH-jump models to both original and outlier free observations. The results of the jump model show that while time-varying jumps do exist in the uncorrected data, most of the jump parameters, however, become insignificant in case of outlier-free observations. Next, the application of an extended EGARCH model, in which OVX is introduced in the GARCH specification, demonstrates that emission prices are highly sensitive to oil market implied volatility and that the impact of OVX on the EUA market appears to be asymmetric. Additionally, the use of forecast encompassing test documents that considering the outlier-free data and using the information content of OVX would improve the volatility forecasts for the carbon emission market. The results of our research carry important implications for both investors and policymakers. (C) 2017 Elsevier Ltd. All rights reserved.
机译:这项研究的目标是三个方面。首先,我们旨在评估欧盟补贴(EUA)数据中是否出现异常值或极端值。其次,我们研究碳排放市场中是否存在时变跳跃。第三,我们使用原油波动率指数(OVX)来研究石油市场不确定性对排放价格波动的影响。为了检测EUA市场中的异常值,我们采用Ane等人提出的标准方法。 (2008年),并确定排放数据中的几个异常值。发现并消除那些极端之后,我们将GARCH-jump模型应用于原始观测值和离群值观测值。跳跃模型的结果表明,尽管时变跳跃确实存在于未校正的数据中,但是,在没有异常值观察的情况下,大多数跳跃参数变得无关紧要。接下来,在GARCH规范中引入OVX的扩展EGARCH模型的应用表明,排放价格对石油市场隐含波动率高度敏感,并且OVX对EUA市场的影响似乎是不对称的。此外,使用包含测试文件的预测,考虑到无异常数据并使用OVX的信息内容,将会改善碳排放市场的波动性预测。我们的研究结果对投资者和决策者都具有重要意义。 (C)2017 Elsevier Ltd.保留所有权利。

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