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首页> 外文期刊>The European journal of finance >Pricing temperature derivatives with a filtered historical simulation approach
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Pricing temperature derivatives with a filtered historical simulation approach

机译:使用过滤的历史模拟方法对温度导数进行定价

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In this paper, we propose pricing temperature derivatives using a filtered historical simulation (FHS) approach that amalgamates model-based treatment of volatility and empirical innovation density. The FHS approach implicitly captures the risk premium with the entire risk-neutral model (except the innovation distribution), thereby providing significantly more flexibility than existing methods that use only one designated parameter to capture the risk premium. Additionally, instead of relying on the fitted innovation distribution, the FHS approach uses empirical innovations to capture excess skewness, excess kurtosis, and other non-standard features in the temperature data, all of which are important for the correct pricing of temperature derivatives. We apply the FHS approach to pricing derivatives written on the temperature of Chicago, and demonstrate that this approach yields better in-sample and out-of-sample pricing performance than the constant market price of risk method and the consumption-based method.
机译:在本文中,我们提出了使用过滤历史模拟(FHS)方法对温度导数进行定价的方法,该方法将基于模型的波动率和经验创新密度的处理融合在一起。 FHS方法利用整个风险中性模型(创新分布除外)隐式地捕获了风险溢价,从而比仅使用一个指定参数来捕获风险溢价的现有方法提供了更大的灵活性。此外,FHS方法不是依靠适合的创新分布,而是使用经验创新来捕获温度数据中的过度偏斜,过度峰度和其他非标准特征,所有这些对于正确确定温度导数都非常重要。我们将FHS方法应用于在芝加哥温度下编写的衍生产品定价,并证明与固定市场价格风险方法和基于消耗的方法相比,此方法可产生更好的样本内和样本外定价性能。

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