Notes on the Neglected Premisses of the Hodrick-Prescott Detrending and the Hamilton Regression Filter

R. Franke, J. Kukacka
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引用次数: 2

Abstract

The Hodrick-Prescott filter is a convenient and therefore widely and routinely applied detrending method in macroeconomics working with empirical data. However, James Hamilton has recently gained attention with his vigorous advice against it and a proposal of a better alternative. Before abandoning Hodrick-Prescott and uncritically switching to the Hamilton regression filter, or before by force of habit ignoring Hamilton's contribution altogether, this paper, in a nontechnical and elementary manner, provides a little methodological reflection about the premisses behind the two approaches. In addition, it sets up a stylized oscillatory scenario in which the Hamilton filter dramatically misjudges the trend. On the other hand, it sketches a modification of the Hodrick-Prescott approach and also a search strategy that, at least under similar conditions, can help find a more appropriate degree of trend smoothing than the conventional choice of lambda = 1600 for quarterly data.
关于Hodrick-Prescott趋势和Hamilton回归滤波器被忽视前提的注解
在处理经验数据的宏观经济学中,Hodrick-Prescott过滤器是一种方便的、因此被广泛和常规应用的去趋势方法。然而,詹姆斯·汉密尔顿(James Hamilton)最近提出了反对它的有力建议,并提出了一个更好的替代方案,引起了人们的注意。在放弃Hodrick-Prescott而不加批判地转向汉密尔顿回归过滤器之前,或者在习惯上完全忽略汉密尔顿的贡献之前,本文以一种非技术和基本的方式,对这两种方法背后的前提提供了一点方法论上的反思。此外,它还建立了一个程式化的振荡场景,其中汉密尔顿滤波器严重误判了趋势。另一方面,它概述了Hodrick-Prescott方法的修改,也是一种搜索策略,至少在类似的条件下,可以帮助找到比传统选择lambda = 1600的季度数据更合适的趋势平滑程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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