Given an ensemble of randomized regression trees, it is possible to restructure them as a collection of multilayered neural networks with particular connection weights. Following this principle, we reformulate the random forest method of Breiman (2001) into a neural network setting, and in turn propose two new hybrid procedures that we call neural random forests. Both predictors exploit prior knowledge of regression trees for their architecture, have less parameters to tune than standard networks, and less restrictions on the geometry of the decision boundaries than trees. Consistency results are proved, and substantial numerical evidence is provided on both synthetic and real data sets to assess the excellent performance of our methods in ...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Given an ensemble of randomized regression trees, it is possible to restructure them as a collection...
Ensemble methods show improved generalization capabilities that outperforrn those of single larners....
A random forest is a popular machine learning ensemble method that has proven successful in solving ...
are hard to train from limited data. Formalizing a connection between Random Forests (RFs) and ANNs ...
The random subspace method, also known as the pillar of random forests, is good at making precise an...
Regression conformal prediction produces prediction intervals that are valid, i.e., the probability ...
The aim of this paper is to propose a novel prediction model based on an ensemble of deep neural net...
Approaches combining methods based on decision trees and neural networks are an important examples o...
International audienceAbstract Motivation The principle of Breiman's random forest (RF) is to build ...
Random forests are a statistical learning method widely used in many areas of scientific research es...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
Ensembles of randomized decision trees, usually referred to as random forests, are widely used for c...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Given an ensemble of randomized regression trees, it is possible to restructure them as a collection...
Ensemble methods show improved generalization capabilities that outperforrn those of single larners....
A random forest is a popular machine learning ensemble method that has proven successful in solving ...
are hard to train from limited data. Formalizing a connection between Random Forests (RFs) and ANNs ...
The random subspace method, also known as the pillar of random forests, is good at making precise an...
Regression conformal prediction produces prediction intervals that are valid, i.e., the probability ...
The aim of this paper is to propose a novel prediction model based on an ensemble of deep neural net...
Approaches combining methods based on decision trees and neural networks are an important examples o...
International audienceAbstract Motivation The principle of Breiman's random forest (RF) is to build ...
Random forests are a statistical learning method widely used in many areas of scientific research es...
Despite widespread interest and practical use, the theoretical properties of random forests are stil...
Ensembles of randomized decision trees, usually referred to as random forests, are widely used for c...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...