SVARs with breaks: Identification and inference
Emanuele Bacchiocchi, Toru Kitagawa

TL;DR
This paper introduces SVAR models with structural breaks and restrictions, providing new identification conditions and inference methods that account for observationally equivalent parameters, with applications to US monetary policy.
Contribution
It develops novel identification and inference techniques for SVARs with structural breaks and constraints, addressing issues of local point identification and prior sensitivity.
Findings
Restrictions improve identification of SVAR-WB models
Bayesian methods account for observational equivalence
Application to US monetary policy transmission
Abstract
In this paper we propose a class of structural vector autoregressions (SVARs) characterized by structural breaks (SVAR-WB). Together with standard restrictions on the parameters and on functions of them, we also consider constraints across the different regimes. Such constraints can be either (a) in the form of stability restrictions, indicating that not all the parameters or impulse responses are subject to structural changes, or (b) in terms of inequalities regarding particular characteristics of the SVAR-WB across the regimes. We show that all these kinds of restrictions provide benefits in terms of identification. We derive conditions for point and set identification of the structural parameters of the SVAR-WB, mixing equality, sign, rank and stability restrictions, as well as constraints on forecast error variances (FEVs). As point identification, when achieved, holds locally but…
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Taxonomy
TopicsRobot Manipulation and Learning · Atrial Fibrillation Management and Outcomes
MethodsSparse Evolutionary Training
