ArXiv TLDR

Identification in (Endogenously) Nonlinear SVARs Is Easier Than You Think

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2604.07718

James A. Duffy, Sophocles Mavroeidis

econ.EMmath.ST

TLDR

This paper demonstrates that identifying endogenously nonlinear SVARs is as straightforward as linear SVARs, simplifying their application.

Key contributions

  • Shows endogenously nonlinear SVARs are identified up to an orthogonal transformation.
  • Proves existing linear SVAR identification schemes extend directly to nonlinear models.
  • Accommodates features like asymmetric impact multipliers and endogenous regime switching.
  • Applies methodology to the nonlinear Phillips curve, finding state-dependent inflation dynamics.

Why it matters

This work significantly simplifies the use of nonlinear SVARs, making complex economic phenomena like regime switching more tractable. It expands the applicability of established identification methods, enabling robust analysis of state-dependent dynamics in macroeconomics.

Original Abstract

We study identification in structural vector autoregressions (SVARs) in which the endogenous variables enter nonlinearly on the left-hand side of the model, a feature we term endogenous nonlinearity, to distinguish it from the more familiar case in which nonlinearity arises only through exogenous or predetermined variables. This class of models accommodates asymmetric impact multipliers, endogenous regime switching, and occasionally binding constraints. We show that, under weak regularity conditions, the model parameters and structural shocks are (nonparametrically) identified up to an orthogonal transformation, exactly as in a linear SVAR. Our results have the powerful implication that most existing identification schemes for linear SVARs extend directly to our nonlinear setting, with the number of restrictions required to achieve exact identification remaining unchanged. We specialise our results to piecewise affine SVARs, which provide a convenient framework for the modelling of endogenous regime switching, and their smooth transition counterparts. We illustrate our methodology with an application to the nonlinear Phillips curve, providing a test for the presence of nonlinearity that is robust to the choice of identifying assumptions, and finding significant evidence for state-dependent inflation dynamics.

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