The forecastSNSTS
package provides methods to compute
linear h-step prediction coefficients based on localised and iterated
Yule-Walker estimates and empirical mean square prediction errors from
the resulting predictors.
It is intended to support the paper Predictive, finite-sample model choice for time series under stationarity and non-stationarity, which we refer to as Kley et al. (2019).
You can track (and contribute to) the development of
forecastSNSTS
at
https://github.com/tobiaskley/forecastSNSTS. If you encounter unexpected
behaviour while using forecastSNSTS
, please write an
email
or file an issue.
forecastSNSTS
First, if you have not done so already, install R from http://www.r-project.org (click on download R, select a location close to you, and download R for your platform). Once you have the latest version of R installed and started execute the following commands on the R shell:
install.packages("forecastSNSTS")
devtools::install_github("tobiaskley/forecastSNSTS", ref="develop")
This will first install the R package devtools
and then
use it to install the latest (development) version of
forecastSNSTS
from the GitHub repository. In case you do
not have LaTeX installed on your computer you may want to use
Now that you have R and forecastSNSTS
installed you can
access all the functions available. To load the package and access the
help files:
library(forecastSNSTS)
help("forecastSNSTS")
A demo is available. It can be started by
demo("tvARMA11")
At the bottom of the online help page to the package you will find an index to all the help files available.
forecastSNSTSexamples
Note that there is a separate R package, called forecastSNSTSexamples and available only on GitHub, that can be used to replicate the empirical examples from Section 5 of Kley et al. (2019).