Robust density estimation over star-shaped density classes
Abstract
We establish a novel criterion for comparing the performance of two densities, and , within the context of corrupted data. Utilizing this criterion, we propose an algorithm to construct a density estimator within a star-shaped density class, , under conditions of data corruption. We proceed to derive the minimax upper and lower bounds for density estimation across this star-shaped density class, characterized by densities that are uniformly bounded above and below (in the sup norm), in the presence of adversarially corrupted data. Specifically, we assume that a fraction of the observations are arbitrarily corrupted. We obtain the minimax upper bound . Under certain conditions, we obtain the minimax risk, up to proportionality constants, under the squared loss as where for a sufficiently large constant . Here, denotes the local entropy of the set , and is the diameter of .
Cite
@article{arxiv.2501.10025,
title = {Robust density estimation over star-shaped density classes},
author = {Xiaolong Liu and Matey Neykov},
journal= {arXiv preprint arXiv:2501.10025},
year = {2025}
}