MECOMLSep 29, 2020

Dynamic sparsity on dynamic regression models

arXiv:2009.14131v15 citations
Originality Synthesis-oriented
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This work addresses dynamic regression modeling for statisticians, but it is incremental as it builds on prior methods like Ishwaran and Rao (2005).

The authors tackled variable selection and shrinkage in Gaussian dynamic linear regression by proposing a Bayesian method for time-varying sparsity using extended spike-and-slab priors, with results demonstrated through simulations and a real data application.

In the present work, we consider variable selection and shrinkage for the Gaussian dynamic linear regression within a Bayesian framework. In particular, we propose a novel method that allows for time-varying sparsity, based on an extension of spike-and-slab priors for dynamic models. This is done by assigning appropriate Markov switching priors for the time-varying coefficients' variances, extending the previous work of Ishwaran and Rao (2005). Furthermore, we investigate different priors, including the common Inverted gamma prior for the process variances, and other mixture prior distributions such as Gamma priors for both the spike and the slab, which leads to a mixture of Normal-Gammas priors (Griffin ad Brown, 2010) for the coefficients. In this sense, our prior can be view as a dynamic variable selection prior which induces either smoothness (through the slab) or shrinkage towards zero (through the spike) at each time point. The MCMC method used for posterior computation uses Markov latent variables that can assume binary regimes at each time point to generate the coefficients' variances. In that way, our model is a dynamic mixture model, thus, we could use the algorithm of Gerlach et al (2000) to generate the latent processes without conditioning on the states. Finally, our approach is exemplified through simulated examples and a real data application.

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