I discuss a framework to allow dynamic sparsity in time-varying parameter regression models. The conditional variances of the innovations of time-varying parameters are time varying and equal to zero adaptively via thresholding. The resulting model allows the dynamics of the time-varying parameters to mix over different frequencies of parameter changes in a data driven way and permits great flexibility while achieving model parsimony. A convenient strategy is discussed to infer if each coefficient is static or dynamic and, if dynamic, how frequent the parameter change is. An MCMC scheme is developed for model estimation. The performance of the proposed approach is illustrated in studies of both simulated and real economic data.
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Univ Salzburg, Salzburg Ctr European Union Studies, Monchsberg 2A, A-5020 Salzburg, AustriaUniv Salzburg, Salzburg Ctr European Union Studies, Monchsberg 2A, A-5020 Salzburg, Austria
Huber, Florian
Koop, Gary
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Univ Strathclyde, Dept Econ, Glasgow, Lanark, ScotlandUniv Salzburg, Salzburg Ctr European Union Studies, Monchsberg 2A, A-5020 Salzburg, Austria
Koop, Gary
Onorante, Luca
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European Cent Bank, Frankfurt, GermanyUniv Salzburg, Salzburg Ctr European Union Studies, Monchsberg 2A, A-5020 Salzburg, Austria