Neural Random Forests

04/25/2016
by   Gérard Biau, et al.
0

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. 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 a large variety of prediction problems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/12/2023

Neural Attention Forests: Transformer-Based Forest Improvement

A new approach called NAF (the Neural Attention Forest) for solving regr...
research
05/12/2014

Consistency of random forests

Random forests are a learning algorithm proposed by Breiman [Mach. Learn...
research
03/30/2021

Trees, Forests, Chickens, and Eggs: When and Why to Prune Trees in a Random Forest

Due to their long-standing reputation as excellent off-the-shelf predict...
research
11/14/2019

Uncertainty Quantification in Ensembles of Honest Regression Trees using Generalized Fiducial Inference

Due to their accuracies, methods based on ensembles of regression trees ...
research
10/10/2020

Rare-Event Simulation for Neural Network and Random Forest Predictors

We study rare-event simulation for a class of problems where the target ...
research
10/27/2018

Dealing with Uncertain Inputs in Regression Trees

Tree-based ensemble methods, as Random Forests and Gradient Boosted Tree...
research
09/02/2019

Bayesian Neural Tree Models for Nonparametric Regression

Frequentist and Bayesian methods differ in many aspects, but share some ...

Please sign up or login with your details

Forgot password? Click here to reset