Tree ensemble methods such as random forests [Breiman, 2001] are very popular to handle high-dimensional tabular data sets, notably because of their good predictive accuracy. However, when machine learning is used for decision-making problems, settling for the best predictive procedures may not be reasonable since enlightened decisions require an in-depth comprehension of the algorithm prediction process. Unfortunately, random forests are not intrinsically interpretable since their prediction results from averaging several hundreds of decision trees. A classic approach to gain knowledge on this so-called black-box algorithm is to compute variable importances, that are employed to assess the predictive impact of each input variable. Variable...
This paper is about variable selection with the random forests algorithm in presence of correlated p...
Variable importance measures for random forests have been receiving increased attention as a means o...
Embedded feature selection can be performed by analyzing the variables used in a Random Forest. Such...
Tree ensemble methods such as random forests [Breiman, 2001] are very popular to handle high-dimensi...
peer reviewedDespite growing interest and practical use in various scientific areas, variable import...
Data analysis and machine learning have become an integrative part of the modern scientific methodol...
Abstract Background Random forests are becoming increasingly popular in many scientific fields becau...
International audienceThe present manuscript tackles the issues of model interpretability and variab...
Abstract Background Random forests are a popular method in many fields since they can be successfull...
Variable importance measures for random forests have been receiving increased attention as a means o...
In the original Random Forest (RF) approach, Breiman proposes an embedded feature importance index. ...
Background: Variable importance measures for random forests have been receiving increased attention ...
Random forests are becoming increasingly popular in many scientific fields because they can cope wit...
This paper proposes, focusing on random forests, the increasingly used statistical method for classi...
Tree ensembles are becoming well-established as popular and powerful data modelling techniques. Tree...
This paper is about variable selection with the random forests algorithm in presence of correlated p...
Variable importance measures for random forests have been receiving increased attention as a means o...
Embedded feature selection can be performed by analyzing the variables used in a Random Forest. Such...
Tree ensemble methods such as random forests [Breiman, 2001] are very popular to handle high-dimensi...
peer reviewedDespite growing interest and practical use in various scientific areas, variable import...
Data analysis and machine learning have become an integrative part of the modern scientific methodol...
Abstract Background Random forests are becoming increasingly popular in many scientific fields becau...
International audienceThe present manuscript tackles the issues of model interpretability and variab...
Abstract Background Random forests are a popular method in many fields since they can be successfull...
Variable importance measures for random forests have been receiving increased attention as a means o...
In the original Random Forest (RF) approach, Breiman proposes an embedded feature importance index. ...
Background: Variable importance measures for random forests have been receiving increased attention ...
Random forests are becoming increasingly popular in many scientific fields because they can cope wit...
This paper proposes, focusing on random forests, the increasingly used statistical method for classi...
Tree ensembles are becoming well-established as popular and powerful data modelling techniques. Tree...
This paper is about variable selection with the random forests algorithm in presence of correlated p...
Variable importance measures for random forests have been receiving increased attention as a means o...
Embedded feature selection can be performed by analyzing the variables used in a Random Forest. Such...