The Distributional Random Forest (DRF) is a recently introduced Random Forest algorithm to estimate multivariate conditional distributions. Due to its general estimation procedure, it can be employed to estimate a wide range of targets such as conditional average treatment effects, conditional quantiles, and conditional correlations. However, only results about the consistency and convergence rate of the DRF prediction are available so far. We characterize the asymptotic distribution of DRF and develop a bootstrap approximation of it. This allows us to derive inferential tools for quantifying standard errors and the construction of confidence regions that have asymptotic coverage guarantees. In simulation studies, we empirically validate th...
Random Forests is a useful ensemble approach that provides accurate predictions for classification, ...
International audienceRandom forests are a learning algorithm proposed by Breiman [Mach. Learn. 45 (...
Random forests are one type of the most effective ensemble learning methods. In spite of their sound...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
Random Forest (Breiman, 2001) is a successful and widely used regression and classification algorith...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
Distributional Random Forest (DRF) is a flexible forest-based method to estimate the full conditiona...
Despite the success of tree-¬based learning algorithms (bagging, boosting, random forests), these me...
Regression models for supervised learning problems with a continuous response are commonly understoo...
International audienceRandom forest is an accurate classification strategy, which estimates the post...
We study the variability of predictions made by bagged learners and random forests, and show how to ...
203 pagesIn this thesis we aim to create a framework to quantify uncertainty of model predictions us...
Random forests are among the most popular off-the-shelf supervised learning algorithms. Despite the...
Uncertainty measures estimate the reliability of a predictive model. Especially in the field of mole...
<p>Observations of district population density (black points) are ordered from lowest to highest den...
Random Forests is a useful ensemble approach that provides accurate predictions for classification, ...
International audienceRandom forests are a learning algorithm proposed by Breiman [Mach. Learn. 45 (...
Random forests are one type of the most effective ensemble learning methods. In spite of their sound...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
Random Forest (Breiman, 2001) is a successful and widely used regression and classification algorith...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
Distributional Random Forest (DRF) is a flexible forest-based method to estimate the full conditiona...
Despite the success of tree-¬based learning algorithms (bagging, boosting, random forests), these me...
Regression models for supervised learning problems with a continuous response are commonly understoo...
International audienceRandom forest is an accurate classification strategy, which estimates the post...
We study the variability of predictions made by bagged learners and random forests, and show how to ...
203 pagesIn this thesis we aim to create a framework to quantify uncertainty of model predictions us...
Random forests are among the most popular off-the-shelf supervised learning algorithms. Despite the...
Uncertainty measures estimate the reliability of a predictive model. Especially in the field of mole...
<p>Observations of district population density (black points) are ordered from lowest to highest den...
Random Forests is a useful ensemble approach that provides accurate predictions for classification, ...
International audienceRandom forests are a learning algorithm proposed by Breiman [Mach. Learn. 45 (...
Random forests are one type of the most effective ensemble learning methods. In spite of their sound...