We present new insights into causal inference in the context of Heterogeneous Treatment Effects by proposing natural variants of Random Forests to estimate the key conditional distributions. To achieve this, we recast Breiman's original splitting criterion in terms of Wasserstein distances between empirical measures. This reformulation indicates that Random Forests are well adapted to estimate conditional distributions and provides a natural extension of the algorithm to multivariate outputs. Following the philosophy of Breiman's construction, we propose some variants of the splitting rule that are well-suited to the conditional distribution estimation problem. Some preliminary theoretical connections are established along with various nume...
Forest-based methods have recently gained in popularity for non-parametric treatment effect estimati...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
This paper describes a general scheme for accomodating different types of conditional distributions ...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
Random Forest (Breiman, 2001) is a successful and widely used regression and classification algorith...
Causal inference from observational data requires untestable identification assumptions. If these as...
Recent studies have expanded the focus of machine learning methods like random forests beyond predic...
We study and compare several variants of random forests tailored to prognostic models for ordinal ou...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
Estimation of individual treatment effect in observational data is complicated due to the challenges...
Random forests are a statistical learning method widely used in many areas of scientific research es...
We propose a new inference rule for estimating causal structure that underlies the observed statist...
Causal random forests provide efficient estimates of heterogeneous treatment effects. However, fores...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
Doctor of PhilosophyDepartment of StatisticsMichael J. HigginsCausal inference is a branch of statis...
Forest-based methods have recently gained in popularity for non-parametric treatment effect estimati...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
This paper describes a general scheme for accomodating different types of conditional distributions ...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
Random Forest (Breiman, 2001) is a successful and widely used regression and classification algorith...
Causal inference from observational data requires untestable identification assumptions. If these as...
Recent studies have expanded the focus of machine learning methods like random forests beyond predic...
We study and compare several variants of random forests tailored to prognostic models for ordinal ou...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
Estimation of individual treatment effect in observational data is complicated due to the challenges...
Random forests are a statistical learning method widely used in many areas of scientific research es...
We propose a new inference rule for estimating causal structure that underlies the observed statist...
Causal random forests provide efficient estimates of heterogeneous treatment effects. However, fores...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
Doctor of PhilosophyDepartment of StatisticsMichael J. HigginsCausal inference is a branch of statis...
Forest-based methods have recently gained in popularity for non-parametric treatment effect estimati...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
This paper describes a general scheme for accomodating different types of conditional distributions ...