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A Novel and Optimal Spectral Method for Permutation Synchronization

2023-03-21Unverified0· sign in to hype

Duc Nguyen, Anderson Ye Zhang

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Abstract

Permutation synchronization is an important problem in computer science that constitutes the key step of many computer vision tasks. The goal is to recover n latent permutations from their noisy and incomplete pairwise measurements. In recent years, spectral methods have gained increasing popularity thanks to their simplicity and computational efficiency. Spectral methods utilize the leading eigenspace U of the data matrix and its block submatrices U_1,U_2,, U_n to recover the permutations. In this paper, we propose a novel and statistically optimal spectral algorithm. Unlike the existing methods which use _jU_1^\_j 2, ours constructs an anchor matrix M by aggregating useful information from all of the block submatrices and estimates the latent permutations through _jM^\_j 1. This modification overcomes a crucial limitation of the existing methods caused by the repetitive use of U_1 and leads to an improved numerical performance. To establish the optimality of the proposed method, we carry out a fine-grained spectral analysis and obtain a sharp exponential error bound that matches the minimax rate.

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