LongituRF - Random Forests for Longitudinal Data
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) <doi:10.1177/0962280220946080> Random forests for
high-dimensional longitudinal data.