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Added support for mixed-frequency estimation with AR(1)
idiosyncratic errors (quarterly.vars combined with
idio.ar1 = TRUE). This implements the full model of Banbura
and Modugno (2014), allowing observation errors to follow AR(1)
processes while handling mixed monthly-quarterly data with temporal
aggregation constraints.
New internal functions init_cond_MQ_idio() and
EMstepBMMQidio() implement the EM algorithm for the
combined MQ + idio.ar1 case, with state vector structure
[factors, monthly_errors, quarterly_error_lags].
Updated plot.dfm() with
type = "residual" to properly handle mixed-frequency and
AR(1) error models by using the residuals() method
internally.
Added examples and documentation for the new MQ + idio.ar1
functionality in both the DFM() help page and the
introductory vignette.
quarterly.vars, enabling mixed-frequency
estimation with monthly and quarterly data following Banbura and Modugno
(2014). The data matrix should contain the quarterly variables at the
end (after the monthly ones).inv_sympd() by Armadillo
inv() in C++ Kalman Filter to improve numerical robustness
at a minor performance cost.summary.dfm: print method showed
that model had AR(1) errors even though idio.ar1 = FALSE by
default.Added argument idio.ar1 = TRUE allowing estimation
of approximate DFM’s with AR(1) observation errors.
Added a small theoretical vignette entitled ‘Dynamic Factor Models: A Very Short Introduction’. This vignette lays a foundation for the present and future functionality of dfms. I plan to implement all features described in this vignette until summer 2023.
na.keep = TRUE to
fitted.dfm. Setting na.keep = FALSE allows
interpolation of data based on the DFM. Thanks @apoorvalal (#45).summary.dfm occurring if only one
factor was estimated (basically an issue with dropping matrix dimensions
which lead the factor summary statistics to be displayed without
names).New default em.method = "auto", which uses
"BM" if the data has any missing values and
"DGR" otherwise.
Added vignette providing a walkthrough of the main features.
DFM(). The new name was inspired by the vars
package.These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.