Popular decision tree algorithms are provably noise tolerant

06/17/2022
by   Guy Blanc, et al.
0

Using the framework of boosting, we prove that all impurity-based decision tree learning algorithms, including the classic ID3, C4.5, and CART, are highly noise tolerant. Our guarantees hold under the strongest noise model of nasty noise, and we provide near-matching upper and lower bounds on the allowable noise rate. We further show that these algorithms, which are simple and have long been central to everyday machine learning, enjoy provable guarantees in the noisy setting that are unmatched by existing algorithms in the theoretical literature on decision tree learning. Taken together, our results add to an ongoing line of research that seeks to place the empirical success of these practical decision tree algorithms on firm theoretical footing.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/18/2019

Top-down induction of decision trees: rigorous guarantees and inherent limitations

Consider the following heuristic for building a decision tree for a func...
research
06/01/2020

Provable guarantees for decision tree induction: the agnostic setting

We give strengthened provable guarantees on the performance of widely em...
research
05/15/2022

Optimization of Decision Tree Evaluation Using SIMD Instructions

Decision forest (decision tree ensemble) is one of the most popular mach...
research
11/03/2020

Estimating decision tree learnability with polylogarithmic sample complexity

We show that top-down decision tree learning heuristics are amenable to ...
research
04/25/2019

TreeGrad: Transferring Tree Ensembles to Neural Networks

Gradient Boosting Decision Tree (GBDT) are popular machine learning algo...
research
12/16/2017

NDT: Neual Decision Tree Towards Fully Functioned Neural Graph

Though traditional algorithms could be embedded into neural architecture...
research
10/16/2020

Universal guarantees for decision tree induction via a higher-order splitting criterion

We propose a simple extension of top-down decision tree learning heurist...

Please sign up or login with your details

Forgot password? Click here to reset