Publication arXiv, travail de recherche postdoctoral sur les arbres de décision probabilistesTree-based ensemble methods, as Random Forests and Gradient Boosted Trees, have been successfully used for regression in many applications and research studies. Furthermore, these methods have been extended in order to deal with uncertainty in the output variable, using for example a quantile loss in Random Forests [16]. To the best of our knowledge, no extension has been provided yet for dealing with uncertainties in the input variables, even though such uncertainties are common in practical situations. We propose here such an extension by showing how standard regression trees optimizing a quadratic loss can be adapted and learned while taking into...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
International audienceThis paper proposes a new tree-based ensemble method for supervised classifica...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...
International audienceThe ensemble methods are popular machine learning techniques which are powerfu...
Uncertainty measures estimate the reliability of a predictive model. Especially in the field of mole...
International audienceWe propose here a generalization of regression trees, referred to as Probabili...
Random forests are a statistical learning method widely used in many areas of scientific research es...
171 pagesMachine learning has become ubiquitous in many areas, including high-stake applications suc...
Ensemble-of-trees algorithms have emerged to the forefront of machine learning due to their ability ...
Ensemble-of-trees algorithms have emerged to the forefront of machine learning due to their ability ...
International audienceRandom forest is an accurate classification strategy, which estimates the post...
Random forests were introduced as a machine learning tool in Breiman (2001) and have since proven to...
Despite the success of tree-¬based learning algorithms (bagging, boosting, random forests), these me...
This paper proposes a novel approach to building regression trees and ensemble learning in survival ...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
International audienceThis paper proposes a new tree-based ensemble method for supervised classifica...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...
International audienceThe ensemble methods are popular machine learning techniques which are powerfu...
Uncertainty measures estimate the reliability of a predictive model. Especially in the field of mole...
International audienceWe propose here a generalization of regression trees, referred to as Probabili...
Random forests are a statistical learning method widely used in many areas of scientific research es...
171 pagesMachine learning has become ubiquitous in many areas, including high-stake applications suc...
Ensemble-of-trees algorithms have emerged to the forefront of machine learning due to their ability ...
Ensemble-of-trees algorithms have emerged to the forefront of machine learning due to their ability ...
International audienceRandom forest is an accurate classification strategy, which estimates the post...
Random forests were introduced as a machine learning tool in Breiman (2001) and have since proven to...
Despite the success of tree-¬based learning algorithms (bagging, boosting, random forests), these me...
This paper proposes a novel approach to building regression trees and ensemble learning in survival ...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...
We propose a robust decision tree induction method that mitigates the problems of instability and p...
International audienceThis paper proposes a new tree-based ensemble method for supervised classifica...
Random forests consisting of an ensemble of regression trees with equal weights are frequently used ...