ForeCA implements Forecastable component analysis in R. For details on algorithm & methodology see Forecastable Component Analysis, JMLR, Goerg (2013).
In a nutshell: ForeCA finds linear combinations of multivariate time series that are most forecastable, where forecastability is measured by the spectral entropy of the resulting signal (linear combination of input).
UPDATE: As of 2020-06-09 ForeCA has
been removed from CRAN, because the ifultools /
sapa dependecies are no longer maintained. I am working
on an update to ForeCA to not rely on these packages,
but only rely on astsa for multivariate specturm
estimation. See NEWS.md
for details.
In the meantime you can install the ForeCA package directly from github as
library(devtools)
devtools::install_github("gmgeorg/ForeCA")
Temporarily not working
You can install the stable version on CRAN:
install.packages('ForeCA')
The workhorse function is ForeCA::foreca()
which works
just like the built-in princomp
function for PCA.
library(ForeCA)
citation("ForeCA")
For a tutorial on how to use foreca()
and the entire
ForeCA suite of functions see the introductory
vignette on CRAN.
ForeCA references & applications in the literature (non-exhaustive; see here for full list of ForeCA citations)
Cross-validated & SO posts (non-exhaustive)
Blog posts (by others)