Jump Dynamics and Leverage Effect: Evidences from Energy Exchange Traded Fund (ETFs)

Jo-Hui Chen, Sabbor Hussain
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Abstract

Abstract This paper is concerned with the behavior of energy ETF prices. It applies three models: autoregressive moving average (ARMA) and generalized autoregressive conditional heteroskedasticity (GARCH), along with their revised forms, ARMA–Exponential-GARCH, Glosten-Jagannathan-Runkle (GJR), and GARCH diffusion process with jump models. This study looks at the volatility behavior and jumps dynamics of Energy and Master Limited Partnership's (MLP) ETFs. The results show that ARMA-GARCH is appropriate for modeling energy and MLP ETFs. Both ETFs offer positive leverage and asymmetric volatility. The results show that the jump model with a GARCH volatility specification has an actual amount of jump presence and time variation in the jump size distribution. The conclusion of the ARMA - EGARCH model gives evidence of the reverse leverage effect. The leverage term positively influences the conditional variance, while the asymmetry coefficient for the GJR model is positive and significant. These results reveal that both Energy and MLPs ETF have high volatility. JEL classification numbers: F3. Keywords: Energy ETFs, MLPs, ARMA-GARCH model, Volatility Asymmetry, Leverage and Jump Effect.
跳跃动力学与杠杆效应:来自能源交易所交易基金(etf)的证据
摘要本文研究能源ETF价格的行为。它应用了三种模型:自回归移动平均(ARMA)和广义自回归条件异方差(GARCH),以及它们的修正形式,ARMA -指数GARCH, glosten - jagannahan - runkle (GJR)和GARCH扩散过程与跳跃模型。本文研究了能源和业主有限合伙基金(MLP) etf的波动行为和跳跃动态。结果表明,ARMA-GARCH模型适用于能量和MLP etf的建模。这两种etf都提供正杠杆和非对称波动。结果表明,采用GARCH波动率规范的跳跃模型在跳跃大小分布上具有实际的跳跃存在量和时间变化。ARMA - EGARCH模型的结论证明了反向杠杆效应的存在。杠杆项正影响条件方差,而GJR模型的不对称系数正且显著。这些结果表明,能源和mlp ETF都具有较高的波动性。JEL分类号:F3。关键词:能源etf, mlp, ARMA-GARCH模型,波动性不对称,杠杆和跳跃效应
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