model4you: An R Package for Personalised Treatment Effect Estimation
Author(s) -
Heidi Seibold,
Achim Zeileis,
Torsten Hothorn
Publication year - 2019
Publication title -
journal of open research software
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.385
H-Index - 6
ISSN - 2049-9647
DOI - 10.5334/jors.219
Subject(s) - computer science , interpretability , estimation , similarity (geometry) , random forest , r package , random effects model , statement (logic) , machine learning , data mining , artificial intelligence , statistics , econometrics , mathematics , programming language , meta analysis , medicine , management , political science , law , economics , image (mathematics)
Typical models estimating treatment effects assume that the treatment effect is the same for all individuals. Model-based recursive partitioning allows to relax this assumption and to estimate stratified treatment effects (model-based trees) or even personalised treatment effects (model-based forests). With model-based trees one can compute treatment effects for different strata of individuals. The strata are found in a data-driven fashion and depend on characteristics of the individuals. Model-based random forests allow for a similarity estimation between individuals in terms of model parameters (e.g. intercept and treatment effect). The similarity measure can then be used to estimate personalised models. The R package model4you implements these stratified and personalised models in the setting with two randomly assigned treatments with a focus on ease of use and interpretability so that clinicians and other users can take the model they usually use for the estimation of the average treatment effect and with a few lines of code get a visualisation that is easy to understand and interpret.
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