Regression models for supervised learning problems with a continuous response are commonly understood as models for the conditional mean of the response given predictors. This notion is simple and therefore appealing for interpretation and visualization. Information about the whole underlying conditional distribution is, however, not available from these models. A more general understanding of regression models as models for conditional distributions allows much broader inference, for example, the computation of prediction intervals or probabilistic predictions for exceeding certain thresholds. Several random forest-type algorithms aim at estimating conditional distributions, most prominently quantile regression forests. We propose a novel ...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
We propose tests for structural change in conditional distributions via quantile regressions. To avo...
We study and compare several variants of random forests tailored to prognostic models for ordinal ou...
Regression models for supervised learning problems with a continuous response are commonly understoo...
Random forests were introduced as a machine learning tool in Breiman (2001) and have since proven to...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
The broad class of conditional transformation models includes interpretable and simple as well as po...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
Recent developments in statistical regression methodology shift away from pure mean regression towar...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...
The Distributional Random Forest (DRF) is a recently introduced Random Forest algorithm to estimate ...
Random Forest (Breiman, 2001) is a successful and widely used regression and classification algorith...
Random forests are powerful non-parametric regression method but are severely limited in their usage...
Quantile regression is a field with steadily growing importance in statistical modeling. It is a com...
Significance Prediction problems are important in many contexts. Examples include cross-s...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
We propose tests for structural change in conditional distributions via quantile regressions. To avo...
We study and compare several variants of random forests tailored to prognostic models for ordinal ou...
Regression models for supervised learning problems with a continuous response are commonly understoo...
Random forests were introduced as a machine learning tool in Breiman (2001) and have since proven to...
We propose a theoretical study of two realistic estimators of conditional distribution functions and...
The broad class of conditional transformation models includes interpretable and simple as well as po...
International audienceWe propose a theoretical study of two realistic estimators of conditional dist...
Recent developments in statistical regression methodology shift away from pure mean regression towar...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...
The Distributional Random Forest (DRF) is a recently introduced Random Forest algorithm to estimate ...
Random Forest (Breiman, 2001) is a successful and widely used regression and classification algorith...
Random forests are powerful non-parametric regression method but are severely limited in their usage...
Quantile regression is a field with steadily growing importance in statistical modeling. It is a com...
Significance Prediction problems are important in many contexts. Examples include cross-s...
We present new insights into causal inference in the context of Heterogeneous Treatment Effects by p...
We propose tests for structural change in conditional distributions via quantile regressions. To avo...
We study and compare several variants of random forests tailored to prognostic models for ordinal ou...