pre

Prediction Rule Ensembles

Derives prediction rule ensembles (PREs). Largely follows the procedure for deriving PREs as described in Friedman & Popescu (2008; <DOI:10.1214/07-AOAS148>), with adjustments and improvements. The main function pre() derives prediction rule ensembles consisting of rules and/or linear terms for continuous, binary, count, multinomial, and multivariate continuous responses. Function gpe() derives generalized prediction ensembles, consisting of rules, hinge and linear functions of the predictor variables.

Total

21,243

Last month

2,225

Last week

643

Average per day

74

Daily downloads

Total downloads

Description file content

Package
pre
Title
Prediction Rule Ensembles
Version
0.7.2
Author
Marjolein Fokkema [aut, cre], Benjamin Christoffersen [aut]
Maintainer
Marjolein Fokkema
Description
Derives prediction rule ensembles (PREs). Largely follows the procedure for deriving PREs as described in Friedman & Popescu (2008; ), with adjustments and improvements. The main function pre() derives prediction rule ensembles consisting of rules and/or linear terms for continuous, binary, count, multinomial, and multivariate continuous responses. Function gpe() derives generalized prediction ensembles, consisting of rules, hinge and linear functions of the predictor variables.
URL
BugReports
https://github.com/marjoleinF/pre/issues
Depends
R (>= 3.5.0)
Imports
earth, Formula, glmnet, graphics, methods, partykit (>= 1.2-0), rpart, stringr, survival, Matrix, MatrixModels
Suggests
akima, datasets, doParallel, foreach, glmertree, grid, mlbench, testthat, mboost
License
GPL-2 | GPL-3
Encoding
UTF-8
LazyData
true
RoxygenNote
7.0.0
NeedsCompilation
no
Packaged
2019-11-28 00:21:51 UTC; fokkemam
Repository
CRAN
Date/Publication
2019-11-29 09:10:10 UTC

install.packages('pre')

0.7.2

16 days ago

https://github.com/marjoleinF/pre

Marjolein Fokkema

GPL-2 | GPL-3

Depends on

R (>= 3.5.0)

Imports

earth, Formula, glmnet, graphics, methods, partykit (>= 1.2-0), rpart, stringr, survival, Matrix, MatrixModels

Suggests

akima, datasets, doParallel, foreach, glmertree, grid, mlbench, testthat, mboost

Discussions