敏感性在计量经济学中的实际应用——以预测组合为例

J. Magnus, A. Vasnev
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引用次数: 0

摘要

敏感性分析不仅对其本身很重要,而且与诊断测试相结合也很重要。我们考虑了如何在实践中使用灵敏度统计的问题,特别是如何判断灵敏度是大还是小。为此,我们区分绝对敏感性和相对敏感性,并强调任何敏感性分析的上下文依赖性质。然后将相对灵敏度应用到预测组合中,并引入基于灵敏度的权重。所有的概念都通过欧洲收益率曲线来说明。在这种情况下,考虑对自相关和正态性假设的敏感性是很自然的。不同的预测模型分别采用等权、拟合权和灵敏度权组合,并与多变量和随机游走基准进行比较。我们证明了基于拟合的权值和基于灵敏度的权值是互补的。对于长期债券,基于敏感性的权重比其他权重表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical Use of Sensitivity in Econometrics with an Illustration to Forecast Combinations
Sensitivity analysis is important for its own sake and also in combination with diagnostic testing. We consider the question how to use sensitivity statistics in practice, in particular how to judge whether sensitivity is large or small. For this purpose we distinguish between absolute and relative sensitivity and highlight the context-dependent nature of any sensitivity analysis. Relative sensitivity is then applied in the context of forecast combination and sensitivity-based weights are introduced. All concepts are illustrated through the European yield curve. In this context it is natural to look at sensitivity to autocorrelation and normality assumptions. Different forecasting models are combined with equal, fit-based and sensitivity-based weights, and compared with the multivariate and random walk benchmarks. We show that the fit-based weights and the sensitivity-based weights are complementary. For long-term maturities the sensitivity-based weights perform better than other weights.
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