Bayesian Analysis of Latent Threshold Dynamic Models


Autoria(s): Nakajima, J; West, M
Contribuinte(s)

West, Mike

Data(s)

01/04/2013

Resumo

We discuss a general approach to dynamic sparsity modeling in multivariate time series analysis. Time-varying parameters are linked to latent processes that are thresholded to induce zero values adaptively, providing natural mechanisms for dynamic variable inclusion/selection. We discuss Bayesian model specification, analysis and prediction in dynamic regressions, time-varying vector autoregressions, and multivariate volatility models using latent thresholding. Application to a topical macroeconomic time series problem illustrates some of the benefits of the approach in terms of statistical and economic interpretations as well as improved predictions. Supplementary materials for this article are available online. © 2013 Copyright Taylor and Francis Group, LLC.

Dissertation

Formato

151 - 164

Identificador

Journal of Business and Economic Statistics, 2013, 31 (2), pp. 151 - 164

0735-0015

http://hdl.handle.net/10161/6152

1537-2707

Relação

Journal of Business and Economic Statistics

10.1080/07350015.2012.747847

Palavras-Chave #Dynamic graphical models #Macroeconomic time series #Multivariate volatility #Sparse time-varying VAR models #Time-varying variable selection
Tipo

Journal Article