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gmwmx
Overview
The gmwmx
R
package implement the
Generalized Method of Wavelet Moments with Exogenous Inputs estimator
(GMWMX) introduced in Cucci, D. A., Voirol,
L., Kermarrec, G., Montillet, J. P., and Guerrier, S. (2022) and
provides functions to estimate times series models that can be expressed
as linear models with correlated residuals. Moreover, the
gmwmx
package provides tools to compare and analyze
estimated models and methods to easily compare results with the Maximum
Likelihood Estimator (MLE) implemented in Hector, allowing to replicate
the examples and simulations considered in Cucci, D. A., Voirol,
L., Kermarrec, G., Montillet, J. P., and Guerrier, S. (2022). In
particular, this package implements a statistical inference framework
for the functional and stochastic parameters of models such as those
used to model Global Navigation Satellite System (GNSS) observations,
enabling the comparison of the proposed method to the standard MLE
estimates implemented in Hector.
Find the package vignettes and user’s manual at the package website.
Below are instructions on how to install and make use of the
gmwmx
package.
The gmwmx
package is available on both CRAN and GitHub.
The CRAN version is considered stable while the GitHub version is
subject to modifications/updates which may lead to installation problems
or broken functions. You can install the stable version of the
gmwmx
package with:
install.packages("gmwmx")
For users who are interested in having the latest developments, the
GitHub version is ideal although more dependencies are required to run a
stable version of the package. Most importantly, users
must have a (C++
) compiler installed on
their machine that is compatible with R (e.g. Clang
).
# Install dependencies
install.packages(c("devtools"))
# Install/Update the package from GitHub
::install_github("SMAC-Group/gmwmx")
devtools
# Install the package with Vignettes/User Guides
::install_github("SMAC-Group/gmwmx", build_vignettes = TRUE) devtools
Hector
In order to runs successfully functions that execute
Hector
, we assume that Hector
is installed and
available in the PATH
of the installation where these
functions are called. More precisely, when running either
estimate_hector()
, remove_outliers_hector()
,
PBO_get_station()
or PBO_get_offsets()
, we
assume that Hector
’s binaries executable
estimatetrend
, removeoutliers
and
date2mjd
are located in a folder available in the
PATH
by R
.
In order to make sure that these functions are available in the
PATH
, you can run Sys.getenv("PATH")
and
ensure that the directory that contains the executable binaries of
Hector
is listed in the PATH
.
For Linux users that are on distributions supported by
Hector
, this can be easily done by:
Hector
’s binaries for the corresponding OS
here.$HOME/app/hector/bin
.PATH
environment
variable by modifying /etc/environment
.R
with Sys.getenv("PATH")
after running the
script and reassigning the new PATH
to the
PATH
environment variable with
. /etc/environment
or equivalently with
source /etc/environment
.> Sys.getenv("PATH")
[1] "$HOME/app/hector/bin:..."
Some users have reported that the procedure described above did not
work on their installation and that even after completing these steps,
the path containing the executable binaries of Hector
was
not accessible to the PATH
recognized by R
. In
this case, a strategy that seems to work is to directly indicate the
path where Hector
is located by executing the following
command before executing a function that runs Hector
:
Sys.setenv(PATH = "$HOME/app/hector/bin")
where "$HOME/app/hector/bin"
is the path where are
located Hector
’s binaries.
R
librariesThe gmwmx
package relies on a limited number of external
libraries, but notably on Rcpp
and
RcppArmadillo
which require a C++
compiler for
installation, such as for example gcc
.
MATLAB
environmentIt is possible to execute functions from the gmwmx
R
package directly from a MATLAB
environment
and to save estimated models in the MATLAB
environment
thanks to Rcall
. Rcall
is an
interface which runs in MATLAB
and provides direct access
to methods and software packages implemented in R
. Refer to
issue #1 for
the detailed procedure and to the official Rcall
project for support.
This source code is released under is the GNU AFFERO GENERAL PUBLIC LICENSE (AGPL) v3.0.
We thank Dr. Machiel Bos for his helpful advises and constructive
comments that helped us to improve the implementation of the
gmwmx
package and to ensure the correct integration of
Hector
into the gmwmx
R
package.
Cucci, D. A., Voirol, L., Kermarrec, G., Montillet, J. P., & Guerrier, S. (2023). The Generalized Method of Wavelet Moments with eXogenous inputs: a fast approach for the analysis of GNSS position time series. Journal of Geodesy, 97(2), 14.
Guerrier, S., Skaloud, J., Stebler, Y. and Victoria-Feser, M.P., 2013. Wavelet-variance-based estimation for composite stochastic processes. Journal of the American Statistical Association, 108(503), pp.1021-1030.
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.