2023
DOI: 10.3982/qe2207
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A new posterior sampler for Bayesian structural vector autoregressive models

Martin Bruns,
Michele Piffer

Abstract: We develop an importance sampler for sign restricted Bayesian structural vector autoregressive models. The algorithm nests as a special case the sampler associated with the popular Normal inverse Wishart Uniform prior, while allowing to move beyond such prior in medium sized models. We then propose a prior on contemporaneous impulse responses that provides flexibility on the magnitude and shape of the impact responses. We illustrate the quantitative relevance of the choice of the prior in an application to US … Show more

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Cited by 6 publications
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