OCLGSPSep 16, 2020

A Unified Approach to Synchronization Problems over Subgroups of the Orthogonal Group

arXiv:2009.07514v438 citations
Originality Incremental advance
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This addresses synchronization problems for various scientific and engineering applications, but appears incremental as it builds on existing methods like the generalized power method.

The authors tackled synchronization problems over subgroups of the orthogonal group by proposing a unified approach with initialization and iterative refinement, showing it achieves strong theoretical error guarantees under certain assumptions and outperforms existing methods in computational speed, scalability, and estimation error in numerical experiments.

The problem of synchronization over a group $\mathcal{G}$ aims to estimate a collection of group elements $G^*_1, \dots, G^*_n \in \mathcal{G}$ based on noisy observations of a subset of all pairwise ratios of the form $G^*_i {G^*_j}^{-1}$. Such a problem has gained much attention recently and finds many applications across a wide range of scientific and engineering areas. In this paper, we consider the class of synchronization problems in which the group is a closed subgroup of the orthogonal group. This class covers many group synchronization problems that arise in practice. Our contribution is fivefold. First, we propose a unified approach for solving this class of group synchronization problems, which consists of a suitable initialization step and an iterative refinement step based on the generalized power method, and show that it enjoys a strong theoretical guarantee on the estimation error under certain assumptions on the group, measurement graph, noise, and initialization. Second, we formulate two geometric conditions that are required by our approach and show that they hold for various practically relevant subgroups of the orthogonal group. The conditions are closely related to the error-bound geometry of the subgroup -- an important notion in optimization. Third, we verify the assumptions on the measurement graph and noise for standard random graph and random matrix models. Fourth, based on the classic notion of metric entropy, we develop and analyze a novel spectral-type estimator. Finally, we show via extensive numerical experiments that our proposed non-convex approach outperforms existing approaches in terms of computational speed, scalability, and/or estimation error.

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