We describe an R package focused on Bayesian analysis of dynamic linear models. The main features of the package are its flexibility to deal with a variety of constant or time-varying, univariate or multivariate models, and the numerically stable singular value decomposition-based algorithms used for filtering and smoothing. In addition to the examples of "out-of-the-box" use, we illustrate how the package can be used in advanced applications to implement a Gibbs sampler for a user-specified model.
CITATION STYLE
Petris, G. (2010). An R package for dynamic linear models. Journal of Statistical Software, 36(12), 1–16. https://doi.org/10.18637/jss.v036.i12
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