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party (version 1.0-14)

A Laboratory for Recursive Partytioning

Description

A computational toolbox for recursive partitioning. The core of the package is ctree(), an implementation of conditional inference trees which embed tree-structured regression models into a well defined theory of conditional inference procedures. This non-parametric class of regression trees is applicable to all kinds of regression problems, including nominal, ordinal, numeric, censored as well as multivariate response variables and arbitrary measurement scales of the covariates. Based on conditional inference trees, cforest() provides an implementation of Breiman's random forests. The function mob() implements an algorithm for recursive partitioning based on parametric models (e.g. linear models, GLMs or survival regression) employing parameter instability tests for split selection. Extensible functionality for visualizing tree-structured regression models is available.

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Version

Install

install.packages('party')

Monthly Downloads

16,447

Version

1.0-14

License

GPL-2

Maintainer

Torsten Hothorn

Last Published

May 30th, 2014

Functions in party (1.0-14)

Memory Allocation

Memory Allocation
Control ctree Hyper Parameters

Control for Conditional Inference Trees
reweight

Re-fitting Models with New Weights
TreeControl Class

Class "TreeControl"
mob_control

Control Parameters for Model-based Partitioning
mob

Model-based Recursive Partitioning
Panel Generating Functions

Panel-Generators for Visualization of Party Trees
ForestControl-class

Class "ForestControl"
BinaryTree Class

Class "BinaryTree"
SplittingNode Class

Class "SplittingNode"
plot.mob

Visualization of MOB Trees
readingSkills

Reading Skills
varimp

Variable Importance
RandomForest-class

Class "RandomForest"
Initialize Methods

Methods for Function initialize in Package `party'
LearningSample Class

Class "LearningSample"
Conditional Inference Trees

Conditional Inference Trees
Control Forest Hyper Parameters

Control for Conditional Tree Forests
Fit Methods

Fit `StatModel' Objects to Data
Plot BinaryTree

Visualization of Binary Regression Trees
cforest

Random Forest
initVariableFrame-methods

Set-up VariableFrame objects
Transformations

Function for Data Transformations