Universal Consistency and Minimax Rates for Online Mondrian Forests
Abstract
We establish the consistency of an algorithm of Mondrian Forests~\cite{lakshminarayanan2014mondrianforests,lakshminarayanan2016mondrianuncertainty}, a randomized classification algorithm that can be implemented online. First, we amend the original Mondrian Forest algorithm proposed in~\cite{lakshminarayanan2014mondrianforests}, that considers a \emph{fixed} lifetime parameter. Indeed, the fact that this parameter is fixed actually hinders statistical consistency of the original procedure. Our modified Mondrian Forest algorithm grows trees with increasing lifetime parameters $\lambda_n$, and uses an alternative updating rule, allowing to work also in an online fashion. Second, we provide a theoretical analysis establishing simple conditions for consistency. Our theoretical analysis also exhibits a surprising fact: our algorithm achieves the minimax rate (optimal rate) for the estimation of a Lipschitz regression function, which is a strong extension of previous results~\cite{arlot2014purf_bias} to an \emph{arbitrary dimension}.
Cite
Text
Mourtada et al. "Universal Consistency and Minimax Rates for Online Mondrian Forests." Neural Information Processing Systems, 2017.Markdown
[Mourtada et al. "Universal Consistency and Minimax Rates for Online Mondrian Forests." Neural Information Processing Systems, 2017.](https://mlanthology.org/neurips/2017/mourtada2017neurips-universal/)BibTeX
@inproceedings{mourtada2017neurips-universal,
title = {{Universal Consistency and Minimax Rates for Online Mondrian Forests}},
author = {Mourtada, Jaouad and Gaïffas, Stéphane and Scornet, Erwan},
booktitle = {Neural Information Processing Systems},
year = {2017},
pages = {3758-3767},
url = {https://mlanthology.org/neurips/2017/mourtada2017neurips-universal/}
}