Causal State-Dependent Local Projections
Joel M. David, Raffaella Giacomini, Xiyu Jiao, Weining Wang
TLDR
This paper clarifies the causal interpretation of state-dependent local projections (LPs) and introduces a nonparametric estimator for robust causal inference.
Key contributions
- Clarifies causal interpretation of state-dependent local projections (LPs) under specific linearity conditions.
- Shows these conditions hold in many micro-macro models, enabling LPs to recover causal impulse responses.
- Introduces a sieve-based nonparametric LP estimator for robust causal inference in micro-macro panels.
- Highlights that common linear interaction LPs often fail to provide causal interpretations.
Why it matters
This paper provides a crucial theoretical foundation for interpreting state-dependent local projections causally, a widely used method in macroeconomics. By introducing a robust nonparametric estimator, it enables more accurate estimation of heterogeneous responses to economic shocks, significantly improving empirical analysis and policy insights.
Original Abstract
State-dependent local projections (LPs) are widely used to estimate how responses to exogenous aggregate shocks vary as a function of observable state variables, yet their causal interpretation remains unclear. We show that this interpretation obtains under the sufficient condition that the conditional mean is linear in the aggregate shock at each horizon, and that this condition holds in a broad class of canonical micro-macro environments, including first-order perturbation solutions of heterogeneous-agent models and macro-finance models. Under this condition, LPs recover causal impulse responses without requiring specification of the full data-generating process. We further show that the causal interpretation of state-dependent LPs is robust to the choice of state variable. By contrast, commonly used linear interaction LPs generally fail to recover causal objects. We therefore develop a sieve-based nonparametric LP estimator that restores causal interpretation and delivers valid pointwise and uniform inference in micro-macro panels. Empirically, allowing for nonparametric state dependence materially changes both the pattern of heterogeneous firm investment responses and their aggregate implications for the transmission of monetary policy shocks.
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