Recursive Partitioning for Modeling Survey Data
box_ind
boxes
end_nodes
grow_rpms
in_node
linearize
node_plot
predict.rpms
predict.rpms_boost
predict.rpms_forest
predict.rpms_proj
predict.rpms_zinf
print.rpms
print.rpms_forest
print.rpms_zinf
prune_rpms
qtree
r2
Recursive Partitioning for Modeling Survey Data (rpms)
rpms
rpms_boost
rpms_forest
rpms_proj
rpms_zinf
survLm
Fit a linear model using data collected from a complex sample
Functions to allow users to build and analyze design consistent tree and random forest models using survey data from a complex sample design. The tree model algorithm can fit a linear model to survey data in each node obtained by recursively partitioning the data. The splitting variables and selected splits are obtained using a randomized permutation test procedure which adjusted for complex sample design features used to obtain the data. Likewise the model fitting algorithm produces design-consistent coefficients to any specified least squares linear model between the dependent and independent variables used in the end nodes. The main functions return the resulting binary tree or random forest as an object of "rpms" or "rpms_forest" type. The package also provides methods modeling a "boosted" tree or forest model and a tree model for zero-inflated data as well as a number of functions and methods available for use with these object types.