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Clustered Local Projections for Time-Varying Models

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  • Ana Maria Herrera
  • Elena Pesavento
  • Alessia Scudiero

Abstract

We propose a clustered local projection (clustered LP) method to estimate impulse response functions in a class of time-varying models where parameter variation is linked to a low-dimensional matrix of observables. We show that the clustered LP recovers the conditional average response when the driving variables are exogenous and a weighted average of the conditional marginal effects when they are endogenous. We propose an iterative estimation method that first classifies the data using k-means, estimates impulse response functions via GMM, and evaluates differences across clustered LP estimates. Our Monte Carlo simulations illustrate the ability of clustered LP to approximate the conditional average response function. We employ our technique to examine how uncertainty influences the transmission of a contractionary monetary policy shock to the 5- and 10-year U.S. nominal Treasury yields. Our estimation results suggest macroeconomic and monetary policy uncertainty operate through complementary but distinct channels: the former primarily amplifies the risk compensation embedded in the term premium, while the latter governs the speed and persistence with which markets revise their expectations about the future rate path following a monetary policy shock.

Suggested Citation

  • Ana Maria Herrera & Elena Pesavento & Alessia Scudiero, 2026. "Clustered Local Projections for Time-Varying Models," Papers 2604.18778, arXiv.org, revised Apr 2026.
  • Handle: RePEc:arx:papers:2604.18778
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    File URL: http://arxiv.org/pdf/2604.18778
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