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Hide-and-Seek with time-series filters: a model-based Monte Carlo study

机译:用时间序列过滤器捉迷藏:基于模型的蒙特卡罗研究

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Time-series filters have become a major tool for univariate and multivariate analysis of business cycles. Yet, the caveats of filtering, such as distortions in spectral density often mentioned in the literature, may have substantial implications for empirical analysis. This paper focuses on two main problems: univariate and multivariate spurious inferences. While detrending the real world data, the true cyclical component is unknown, which makes it problematic to assess the efficiency of time-series filters. Using model-based Monte Carlo simulations solves this issue by introducing four different scenarios with a known trend, cyclical components and shocks. The goal of this exercise is to create realistic long-run macroeconomic time-series. To assess the performance of the five well-established time-series filters, spectral densities of the detrended fluctuations are analyzed and changes in the cross-correlation structure and deviations from the original implied fluctuations are examined. Analysis confirms and complements findings from the existing literature and provides some new insights: (i) presence of the Gibbs-Wilbraham phenomenon (for the Christiano-Fitzgerald and Baxter-King filters), yet no obvious evidence of the Slutzky-Yule phenomenon; (ii) the erroneous choice of filtering bands may lead to spurious inferences about the spectral density peaks of the detrended fluctuations; (iii) preservation of the spectral pattern of the original regular and irregular components after detrending with minor changes in the magnitude of the spectral density peaks; (iv) substantial outlier changes in the cross-correlation structure. The latter distortion may have far-reaching implications for further time-series analysis and may lead to spurious inferences about the interaction between the detrended series.
机译:时间序列过滤器已成为单变量和多元分析商业周期的主要工具。然而,在文献中通常提到的滤波中的滤波等的警告可能对实证分析具有重要意义。本文重点介绍了两个主要问题:单变量和多变量的杂散推理。在拒绝真实世界的数据的同时,真正的循环分量是未知的,这使得评估时间序列过滤器的效率是有问题的。使用基于模型的Monte Carlo模拟通过引入具有已知趋势,周期性组件和冲击的不同场景来解决此问题。本练习的目标是创造现实的长期宏观经济时间系列。为了评估五种良好的时间序列滤波器的性能,分析了减去波动的光谱密度,并检查了互相关结构的变化和与原始隐含波动的偏差。分析证实了现有文学的结果,并提供了一些新的见解:(i)吉布斯 - 威尔布拉罕现象的存在(为Christiano-Fitzgerald和Baxter-King过滤器),但没有明显的证据表明Slutzky-yule现象; (ii)错误选择过滤频带可能导致对杂散波动的光谱密度峰的杂散推断; (iii)在劣化密度峰值幅度的微小变化下,保护原始规则和不规则组分的光谱图案; (iv)交叉相关结构的大量异常变化。后一种失真可能对进一步的时间序列分析具有深远的影响,并且可能导致关于减法系列之间的相互作用的杂散推断。

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