考虑期货市场已实现波动率的天然气现货交易中心多元模型

Michael Weylandt, Yu Han, K. Ensor
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引用次数: 0

摘要

液化天然气(LNG)金融市场是大宗商品市场中一个重要且快速增长的部分。与其他大宗商品市场一样,液化天然气市场也存在固有的空间结构,不同的交付中心有不同的价格动态。某些中心支持高流动性的市场,允许有效和强大的价格发现,而其他中心高度缺乏流动性,限制了标准风险管理技术的有效性。我们提出了一种联合建模策略,该策略利用来自交易密集中心的高频信息来改进交易稀疏中心的波动率估计和风险管理。所得到的模型具有优越的样本内外预测性能,特别是对于几种常用的风险管理度量,表明联合建模确实是可能的和有用的。为了改进估计,采用了贝叶斯估计策略,并提出了数据驱动的弱信息先验。我们的模型对稀疏数据具有鲁棒性,可以有效地用于任何具有类似不规则数据可用性模式的市场。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate Modeling of Natural Gas Spot Trading Hubs Incorporating Futures Market Realized Volatility
Financial markets for Liquified Natural Gas (LNG) are an important and rapidly-growing segment of commodities markets. Like other commodities markets, there is an inherent spatial structure to LNG markets, with different price dynamics for different points of delivery hubs. Certain hubs support highly liquid markets, allowing efficient and robust price discovery, while others are highly illiquid, limiting the effectiveness of standard risk management techniques. We propose a joint modeling strategy, which uses high-frequency information from thickly-traded hubs to improve volatility estimation and risk management at thinly traded hubs. The resulting model has superior in- and out-of-sample predictive performance, particularly for several commonly used risk management metrics, demonstrating that joint modeling is indeed possible and useful. To improve estimation, a Bayesian estimation strategy is employed and data-driven weakly informative priors are suggested. Our model is robust to sparse data and can be effectively used in any market with similar irregular patterns of data availability.
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