Measuring business cycles using vars
Patrick Fève and
Alban Moura
No 25-1673, TSE Working Papers from Toulouse School of Economics (TSE)
Abstract:
We propose to measure business cycles using vector autoregressions (VARs). Our method builds on two insights: VARs automatically decompose the data into stable and unstable components, and variance-based shock identfication can extract meaningful cycles from the stable part. This method has appealing properties: (1) it isolates a well-defined component associated with typical fluctuations; (2) it ensures stationarity by construction; (3) it targets movements at business-cycle frequencies; and (4) it is backward-looking, ensuring that cycles at each date only depend on current and past shocks. Since most existing filters lack one or more of these features, our method offers a valuable alternative. In an empirical application, we show that the two shocks with the largest cyclical impact effectively capture postwar U.S. business cycles and we find a tighter link between real activity and inflation than previously recognized. We compare our method with standard alternatives and document the plausibility and robustness of our results.
JEL-codes: C32 E32 (search for similar items in EconPapers)
Date: 2025-10-09
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Persistent link: https://EconPapers.repec.org/RePEc:tse:wpaper:131001
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