Exact Minimax Optimality of Spectral Methods in Phase Synchronization and Orthogonal Group Synchronization

09/12/2022
by   Anderson Ye Zhang, et al.
0

We study the performance of the spectral method for the phase synchronization problem with additive Gaussian noises and incomplete data. The spectral method utilizes the leading eigenvector of the data matrix followed by a normalization step. We prove that it achieves the minimax lower bound of the problem with a matching leading constant under a squared ℓ_2 loss. This shows that the spectral method has the same performance as more sophisticated procedures including maximum likelihood estimation, generalized power method, and semidefinite programming, when consistent parameter estimation is possible. To establish our result, we first have a novel choice of the population eigenvector, which enable us to establish the exact recovery of the spectral method when there is no additive noise. We then develop a new perturbation analysis toolkit for the leading eigenvector and show it can be well-approximated by its first-order approximation with a small ℓ_2 error. We further extend our analysis to establish the exact minimax optimality of the spectral method for the orthogonal group synchronization.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro