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LongituRF (version 0.9)

Random Forests for Longitudinal Data

Description

Random forests are a statistical learning method widely used in many areas of scientific research essentially for its ability to learn complex relationships between input and output variables and also its capacity to handle high-dimensional data. However, current random forests approaches are not flexible enough to handle longitudinal data. In this package, we propose a general approach of random forests for high-dimensional longitudinal data. It includes a flexible stochastic model which allows the covariance structure to vary over time. Furthermore, we introduce a new method which takes intra-individual covariance into consideration to build random forests. The method is fully detailled in Capitaine et.al. (2020) Random forests for high-dimensional longitudinal data.

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Version

Install

install.packages('LongituRF')

Monthly Downloads

215

Version

0.9

License

GPL-2

Maintainer

Louis Capitaine

Last Published

August 31st, 2020

Functions in LongituRF (0.9)

Moy_sto

Title
MERT

(S)MERT algorithm
DataLongGenerator

Longitudinal data generator
REEMtree

(S)REEMtree algorithm
REEMforest

(S)REEMforest algorithm
Moy

Title
bay

Title
Moy_exp

Title
Moy_fbm

Title
cov.fbm

Title
bay.exp

Title
opti.FBMreem

Title
gam_fbm

Title
logV.fbm

Title
MERF

(S)MERF algorithm
logV.exp

Title
logV

Title
opti.exp

Title
opti.FBM

Title
bay.fbm

Title
predict.exp

blabla
predict.fbm

Title
bay_sto

Title
gam_exp

Title
cov.exp

Title
predict.longituRF

Predict with longitudinal trees and random forests.
predict.sto

Title
sto_analysis

Title
sig.fbm

Title
sig_sto

Title
gam_sto

Title
sig

Title
sig.exp

Title