Optimal functional supervised classification with separation condition
Statistics Theory
2018-01-11 v1 Statistics Theory
Abstract
We consider the binary supervised classification problem with the Gaussian functional model introduced in [7]. Taking advantage of the Gaussian structure, we design a natural plug-in classifier and derive a family of upper bounds on its worst-case excess risk over Sobolev spaces. These bounds are parametrized by a separation distance quantifying the difficulty of the problem, and are proved to be optimal (up to logarithmic factors) through matching minimax lower bounds. Using the recent works of [9] and [14] we also derive a logarithmic lower bound showing that the popular k-nearest neighbors classifier is far from optimality in this specific functional setting.
Keywords
Cite
@article{arxiv.1801.03345,
title = {Optimal functional supervised classification with separation condition},
author = {Sébastien Gadat and Sébastien Gerchinovitz and Clément Marteau},
journal= {arXiv preprint arXiv:1801.03345},
year = {2018}
}