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Dynamic Ranking and Translation Synchronization

Abstract

In many applications, such as sport tournaments or recommendation systems, we have at our disposal data consisting of pairwise comparisons between a set of nn items (or players). The objective is to use this data to infer the latent strength of each item and/or their ranking. Existing results for this problem predominantly focus on the setting consisting of a single comparison graph GG. However, there exist scenarios (e.g., sports tournaments) where the the pairwise comparison data evolves with time. Theoretical results for this dynamic setting are relatively limited and is the focus of this paper. We study an extension of the \emph{translation synchronization} problem, to the dynamic setting. In this setup, we are given a sequence of comparison graphs (Gt)tT(G_t)_{t\in \mathcal{T}}, where T[0,1]\mathcal{T} \subset [0,1] is a grid representing the time domain, and for each item ii and time tTt\in \mathcal{T} there is an associated unknown strength parameter zt,iRz^*_{t,i}\in \mathbb{R}. We aim to recover, for tTt\in\mathcal{T}, the strength vector zt=(zt,1,,zt,n)z^*_t=(z^*_{t,1},\dots,z^*_{t,n}) from noisy measurements of zt,izt,jz^*_{t,i}-z^*_{t,j}, where {i,j}\{i,j\} is an edge in GtG_t. Assuming that ztz^*_t evolves smoothly in tt, we propose two estimators -- one based on a smoothness-penalized least squares approach and the other based on projection onto the low frequency eigenspace of a suitable smoothness operator. For both estimators, we provide finite sample bounds for the 2\ell_2 estimation error under the assumption that GtG_t is connected for all tTt\in \mathcal{T}, thus proving the consistency of the proposed methods in terms of the grid size T|\mathcal{T}|. We complement our theoretical findings with experiments on synthetic and real data.

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