SDP Achieves Exact Minimax Optimality in Phase Synchronization

We study the phase synchronization problem with noisy measurements , where is an -dimensional complex unit-modulus vector and is a complex-valued Gaussian random matrix. It is assumed that each entry is observed with probability . We prove that an SDP relaxation of the MLE achieves the error bound under a normalized squared loss. This result matches the minimax lower bound of the problem, and even the leading constant is sharp. The analysis of the SDP is based on an equivalent non-convex programming whose solution can be characterized as a fixed point of the generalized power iteration lifted to a higher dimensional space. This viewpoint unifies the proofs of the statistical optimality of three different methods: MLE, SDP, and generalized power method. The technique is also applied to the analysis of the SDP for synchronization, and we achieve the minimax optimal error with a sharp constant in the exponent.
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