International audienceWe propose a theoretical study of two realistic estimators of conditional distribution functions and conditional quantiles using random forests. The estimation process uses the bootstrap samples generated from the original dataset when constructing the forest. Bootstrap samples are reused to define the first estimator, while the second requires only the original sample, once the forest has been built. We prove that both proposed estimators of the conditional distribution functions are consistent uniformly a.s. To the best of our knowledge, it is the first proof of consistency including the bootstrap part. We also illustrate the estimation procedures on a numerical example
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Random forests are one type of the most effective ensemble learning methods. In spite of their sound...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
Random forests were introduced as a machine learning tool in Breiman (2001) and have since proven to...
The Distributional Random Forest (DRF) is a recently introduced Random Forest algorithm to estimate ...
Regression models for supervised learning problems with a continuous response are commonly understoo...
A new concept of convergence concerning random probability measure is introduced in order to discuss...
We discuss an application of Generalized Random Forests (GRF) proposed by Athey et al.(2019) to quan...
We prove uniform consistency of Random Survival Forests (RSF), a newly introduced forest ensemble le...
Random Forests is a classification algorithm with a simple structure--a forest of trees are grown as...
The last decade has witnessed a growing interest in random forest models which are recognized to exh...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Random forests are one type of the most effective ensemble learning methods. In spite of their sound...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
Random forests were introduced as a machine learning tool in Breiman (2001) and have since proven to...
The Distributional Random Forest (DRF) is a recently introduced Random Forest algorithm to estimate ...
Regression models for supervised learning problems with a continuous response are commonly understoo...
A new concept of convergence concerning random probability measure is introduced in order to discuss...
We discuss an application of Generalized Random Forests (GRF) proposed by Athey et al.(2019) to quan...
We prove uniform consistency of Random Survival Forests (RSF), a newly introduced forest ensemble le...
Random Forests is a classification algorithm with a simple structure--a forest of trees are grown as...
The last decade has witnessed a growing interest in random forest models which are recognized to exh...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Random forests are one type of the most effective ensemble learning methods. In spite of their sound...