gamboostLSS
gamboostLSS
implements boosting algorithms for fitting generalized linear,
additive and interaction models for to potentially high-dimensional data.
Instead of modeling only the mean, gamboostLSS
enables the user to model
various distribution parameters such as location, scale and shape at the same
time (hence the name GAMLSS, generalized additive models for location, scale and
shape).
Using gamboostLSS
For installation instructions see below.
Instructions on how to use
gamboostLSS
can be found in the gamboostLSS tutorial.Details on the noncyclical fitting method can be found in
Thomas, J., Mayr, A., Bischl, B., Schmid, M., Smith, A., and Hofner, B. (2018), Gradient boosting for distributional regression - faster tuning and improved variable selection via noncyclical updates. Statistics and Computing. 28: 673-687. DOI 10.1007/s11222-017-9754-6. (Preliminary version: ArXiv 1611.10171).
Issues & Feature Requests
For issues, bugs, feature requests etc. please use the GitHub Issues.
Installation
Current version (from CRAN):
install.packages("gamboostLSS")
Latest patch version (patched version of CRAN package; under development) from GitHub:
library("devtools") install_github("boost-R/gamboostLSS") library("gamboostLSS")
Latest development version (version with new features; under development) from GitHub:
library("devtools") install_github("boost-R/gamboostLSS", ref = "devel") library("gamboostLSS")
To be able to use the
install_github()
command, one needs to installdevtools
first:install.packages("devtools")