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Activity Number: 434 - Recent Advances in Unlinked and Permuted Regression
Type: Topic-Contributed
Date/Time: Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
Sponsor: IMS
Abstract #317343
Title: Isotonic Regression with Unknown Permutations: Statistics, Computation, and Adaptation
Author(s): Ashwin Pananjady* and Richard J. Samworth
Companies: Georgia Tech and University of Cambridge
Keywords: permutation-based model; statistical-computational gap; adaptive estimation; shape-constrained estimation
Abstract:

Motivated by models for multiway comparison data, we consider the problem of estimating a coordinate-wise isotonic function on the domain $[0, 1]^d$ from noisy observations collected on a uniform lattice, but where the design points have been permuted along each dimension. While the univariate and bivariate versions of this problem have received significant attention, our focus is on the multivariate case $d \geq 3$. We study both the minimax risk of estimation and the fundamental limits of adaptation (quantified by the "adaptivity index") to a family of piecewise constant functions. We provide a computationally efficient estimator that is minimax optimal while also achieving the smallest adaptivity index possible for polynomial time procedures. Thus, from a worst-case perspective and in sharp contrast to the bivariate case, the latent permutations in the model do not introduce significant computational difficulties over and above vanilla isotonic regression. On the other hand, the fundamental limits of adaptation are significantly different with and without unknown permutations. Consequences for vanilla isotonic regression will also be discussed.


Authors who are presenting talks have a * after their name.

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