Optimal Permutation Estimation in Crowd-Sourcing problems
Statistics Theory
2023-03-31 v3 Statistics Theory
Abstract
Motivated by crowd-sourcing applications, we consider a model where we have partial observations from a bivariate isotonic n x d matrix with an unknown permutation * acting on its rows. Focusing on the twin problems of recovering the permutation * and estimating the unknown matrix, we introduce a polynomial-time procedure achieving the minimax risk for these two problems, this for all possible values of n, d, and all possible sampling efforts. Along the way, we establish that, in some regimes, recovering the unknown permutation * is considerably simpler than estimating the matrix.
Cite
@article{arxiv.2211.04092,
title = {Optimal Permutation Estimation in Crowd-Sourcing problems},
author = {Emmanuel Pilliat and Alexandra Carpentier and Nicolas Verzelen},
journal= {arXiv preprint arXiv:2211.04092},
year = {2023}
}