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Main Author: Quartier-la-Tente, Alain
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.10704
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author Quartier-la-Tente, Alain
author_facet Quartier-la-Tente, Alain
contents Seasonally adjusted series are usually used to analyse the business cycle and turning points. When the irregular is too high, it is preferable to smooth the series in order to analyse the trend-cycle component directly. This study focuses on the real-time estimation of the trend-cycle component around shocks and turning points. The linear moving averages classically used for estimating the trend-cycle, which are sensitive to the presence of atypical points, are compared with robust non-linear methods. We also propose a methodology for extending the Henderson and Musgrave moving averages to take account of external information and thus construct moving averages that are robust to the presence of certain shocks. We describe how to estimate confidence intervals for estimates derived from moving averages, thereby validating the use of these new moving averages. By comparing the methods on simulated and real series, we show that: building robust moving averages makes it possible to reduce revisions and better model turning points around shocks, without degrading the estimates when no shock is observed; robust non-linear methods do not make it possible to extract a trend-cycle component that is satisfactory for economic analysis, with sometimes significant revisions. This study is fully reproducible and all the codes used are available under https://github.com/AQLT/robustMA.
format Preprint
id arxiv_https___arxiv_org_abs_2507_10704
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Estimation de la tendance-cycle avec des méthodes robustes aux points atypiques
Quartier-la-Tente, Alain
Methodology
Seasonally adjusted series are usually used to analyse the business cycle and turning points. When the irregular is too high, it is preferable to smooth the series in order to analyse the trend-cycle component directly. This study focuses on the real-time estimation of the trend-cycle component around shocks and turning points. The linear moving averages classically used for estimating the trend-cycle, which are sensitive to the presence of atypical points, are compared with robust non-linear methods. We also propose a methodology for extending the Henderson and Musgrave moving averages to take account of external information and thus construct moving averages that are robust to the presence of certain shocks. We describe how to estimate confidence intervals for estimates derived from moving averages, thereby validating the use of these new moving averages. By comparing the methods on simulated and real series, we show that: building robust moving averages makes it possible to reduce revisions and better model turning points around shocks, without degrading the estimates when no shock is observed; robust non-linear methods do not make it possible to extract a trend-cycle component that is satisfactory for economic analysis, with sometimes significant revisions. This study is fully reproducible and all the codes used are available under https://github.com/AQLT/robustMA.
title Estimation de la tendance-cycle avec des méthodes robustes aux points atypiques
topic Methodology
url https://arxiv.org/abs/2507.10704