成分分解对衡量消费物价指数中位数和缩减中位数的影响

Christian L. Garciga, Randal J. Verbrugge, Saeed Zaman
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摘要

几十年来,克利夫兰联邦储备银行(FRBC)一直在编制消费者价格指数(CPI)的中位数和修正均值。事实证明,这些方法在各种情况下都很有用,如预测和了解后 COVID 通胀动态。对 FRBC 方法的修订历来涉及提高 CPI 构成部分的分类水平,从而提高准确性。因此,进一步细分将继续提高其准确性似乎是合乎逻辑的。然而,我们从理论上证明,情况未必如此。然后,我们从两个方面探讨了进一步细分的实证影响:住房和非住房部分。我们发现,大幅提高避难所指数的分类程度,同时仅略微提高非避难所指数的分类程度,可提高中位数和修剪平均 CPI 跟踪 CPI 通胀中期趋势的能力,并略微提高对 CPI 通胀未来变动的预测能力。最后,我们研究了我们首选的分类程度的实际影响。我们首选的消费物价指数中位数衡量方法表明,大流行前的趋势通胀率较低,而我们首选的中位数和经过修剪的平均值衡量方法都表明,2021 年的趋势通胀率加速上升。我们还发现,分类程度越高,消费物价指数中位数通胀与失业缺口之间的菲利普斯曲线关系就越弱,尽管在统计上仍然显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effect of Component Disaggregation on Measures of the Median and Trimmed-Mean CPI
For decades, the Federal Reserve Bank of Cleveland (FRBC) has produced median and trimmed-mean consumer price index (CPI) measures. These have proven useful in various contexts, such as forecasting and understanding post-COVID inflation dynamics. Revisions to the FRBC methodology have historically involved increasing the level of disaggregation in the CPI components, which has improved accuracy. Thus, it may seem logical that further disaggregation would continue to enhance its accuracy. However, we theoretically demonstrate that this may not necessarily be the case. We then explore the empirical impact of further disaggregation along two dimensions: shelter and non-shelter components. We find that significantly increasing the disaggregation in the shelter indexes, when combined with only a slight increase in non-shelter disaggregation, improves the ability of the median and trimmed-mean CPI to track the medium-term trend in CPI inflation and marginally increases predictive power over future movements in CPI inflation. Finally, we examine the practical implications of our preferred degree of disaggregation. Our preferred measure of the median CPI suggests that trend inflation was lower pre-pandemic, while both our preferred median and trimmed-mean measures suggest a faster acceleration in trend inflation in 2021. We also find that higher disaggregation marginally weakens the Phillips curve relationship between median CPI inflation and the unemployment gap, though it remains statistically significant.
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