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首页> 外文期刊>The North American journal of economics and finance >Non-linear volatility dynamics and risk management of precious metals
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Non-linear volatility dynamics and risk management of precious metals

机译:贵金属的非线性波动动力学和风险管理

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摘要

In this paper, we investigate the value-at-risk predictions of four major precious metals (gold, silver, platinum, and palladium) with non-linear long memory volatility models, namely FIGARCH, F1A-PARCH and HYGARCH, under normal and Student-t innovations' distributions. For these analyses, we consider both long and short trading positions. Overall, our results reveal that long memory volatility models under Student-t distribution perform well in forecasting a one-day-ahead VaR for both long and short positions. In addition, we find that FIAPARCH model with Student-t distribution, which jointly captures long memory and asymmetry, as well as fat-tails, outperforms other models in VaR forecasting. Our results have potential implications for portfolio managers, producers, and policy makers.
机译:在本文中,我们使用正态和均态下的非线性长记忆波动率模型FIGARCH,F1A-PARCH和HYGARCH来研究四种主要贵金属(金,银,铂和钯)的风险价值预测-t创新的分布。对于这些分析,我们同时考虑多头和空头头寸。总体而言,我们的结果表明,根据Student-t分布的长期记忆波动模型在预测多头和空头的提前一天VaR方面表现良好。此外,我们发现具有Student-t分布的FIAPARCH模型在VaR预测中优于其他模型,该模型共同捕获了较长的内存和不对称性以及粗尾。我们的结果对投资组合经理,生产者和决策者有潜在的影响。

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