深入钻探:非线性、非参数天然气价格和波动性预测

Dusan Bajatovic, Deniz Erdemlioglu, and Nikola Gradojevic
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摘要

摘要:本文研究了一系列日前(亨利枢纽和所有权转移设施 (TTF))天然气价格和波动模型的预测准确性和可解释性。结果表明,相对于各种竞争模型规格,具有深度结构的非线性、非参数模型占主导地位。通过采用可解释人工智能(XAI)方法,我们记录了天然气价格是在原油和电力价格的基础上战略性形成的。虽然天然气回报的条件波动性是由长期记忆动态和原油波动性驱动的,但电力预测指标的信息性在最近的波动时间段内有所提高。尽管我们发现预测性非线性关系本质上是复杂和时变的,但我们的研究结果总体上支持天然气、原油和电力相互关联的观点。我们重点研究了市场经历急剧结构性断裂和极端波动的时期(如 COVID-19 大流行和俄罗斯-乌克兰冲突),结果表明深度学习模型具有更好的适应性,并能显著提高预测的准确性。
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Drilling Deeper: Non-Linear, Non-Parametric Natural Gas Price and Volatility Forecasting
Abstract: This paper studies the forecast accuracy and explainability of a battery of day-ahead (Henry Hub and Title Transfer Facility (TTF)) natural gas price and volatility models. The results demonstrate the dominance of non-linear, non-parametric models with deep structure relative to various competing model specifications. By employing the explainable artificial intelligence (XAI) approach, we document that the price of natural gas is formed strategically based on crude oil and electricity prices. While the conditional volatility of natural gas returns is driven by long-memory dynamics and crude oil volatility, the informativeness of the electricity predictor has improved over the most recent volatile time period. Although we reveal that predictive non-linear relationships are inherently complex and time-varying, our findings in general support the notion that natural gas, crude oil and electricity are interconnected. Focusing on the periods when markets experienced sharp structural breaks and extreme volatility (e.g., the COVID-19 pandemic and the Russia-Ukraine conflict), we show that deep learning models provide better adaptability and lead to significantly more accurate forecast performance.
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