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Activity Number: 296 - Statistical Inference with Permuted Data
Type: Invited
Date/Time: Wednesday, August 11, 2021 : 3:30 PM to 5:20 PM
Sponsor: IMS
Abstract #316910
Title: Adaptive Estimation in Nonparametric Bradley-Terry Model
Author(s): Sumit Mukherjee* and Sabyasachi Chatterjee
Companies: Columbia University and University of Illinois at Urbana-Champaign
Keywords: Non parametric Bradley-Terry model; Shape Restricted Inference; Adaptation; Tournaments; Latent Permutation; Bi-isotonic
Abstract:

The Bradley-Terry model is designed to study tournament matrices $\Theta$, where each team has a parameter $p_i$ quantifying "team strength", and $\Theta_{ij}=\mathbb{P}$(team $i$ beats team $j$)=\frac{p_i}{p_i+p_j}$. The non-parametric Bradley-Terry model generalizes this by positing only suitable monotonicity restrictions on the matrix $\Theta$. Estimating $\Theta$ in this set up using Least Squares is computationally prohibitive, because we typically do not know the correct ranking of the team strengths. We propose a natural computationally efficient estimator for $\Theta$, which uses a plugin estimate for the underlying correct ranking, and study its global worst case risk, as well as its adaptive properties on some special sub cases: (i) a block tournament matrix, (ii) the usual Bradley-Terry model, and (iii) smooth (Lipschitz/Hölder's continuous) matrices.


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