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Modelling the relationship between future energy intraday volatility and trading volume with wavelet

机译:用小波建模未来能源盘中波动与交易量之间的关系

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摘要

Although the energy and stock markets are both characterized by volatility and liquidity, and there has been substantial research to explore the relationship between volatility and trading volume (TV) in stock markets, few researchers have investigated this relationship in energy markets. Moreover, studies that have explored this association within energy markets did not describe its nature or impetus. To redress this oversight, we investigate this relationship using intraday data from the oil and gas markets - the most liquid energy markets in the world. In this way, the current article extends the previous studies through the use of a frequency approach to propose an original analysis of the relationship between volume and volatility. More specifically, we employ a continuous wavelet transform to identify the lead-lag phase between volatility and volume. This framework supplants usual time series modelling, as it uses a measure of coherence for different frequencies and time-scales to capture further changes and time variation in the volume-volatility relationship. Our results provide supportive evidence for the well-known positive relationship between realized volatility and TV, thereby supporting the mixture distribution hypothesis. In particular, our results show that volume causes volatility only during turbulent times', while volatility causes volume during good times'. Furthermore, there is no relationship between volume and volatility in the long term, due to the absence of noise traders and liquidity traders in the long run. These findings are helpful for investors and policymakers as they contribute to better forecast the TV and price volatility during turbulent and calm periods and over several investment horizons.
机译:尽管能源和股票市场都具有波动性和流动性的特征,并且已经进行了大量研究来探索股票市场的波动性和交易量(TV)之间的关系,但是很少有研究人员研究能源市场中的这种关系。此外,在能源市场中探索这种关联的研究并未描述其性质或推动力。为了纠正这种疏忽,我们使用石油和天然气市场(世界上流动性最高的能源市场)的日内数据调查这种关系。通过这种方式,当前文章通过使用频率方法扩展了先前的研究,以提出对交易量和波动率之间关系的原始分析。更具体地说,我们采用连续小波变换来识别波动率和交易量之间的超前-滞后阶段。该框架取代了通常的时间序列建模,因为它使用了针对不同频率和时标的相干性度量来捕获体积-波动关系中的进一步变化和时间变化。我们的结果为已实现的波动率与TV之间的众所周知的正相关关系提供了支持性证据,从而支持了混合分布假设。特别地,我们的结果表明,体积仅在动荡时期导致波动,而波动则在顺境时期导致波动。此外,由于长期没有噪声交易者和流动性交易者,因此从长期来看,交易量和波动率之间没有关系。这些发现对投资者和政策制定者很有帮助,因为它们有助于更好地预测在动荡,平静的时期以及在多个投资期限内的电视和价格波动。

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