%0 Conference Paper %B Mathematical and Scientific Machine Learning %D 2021 %T Construction of optimal spectral methods in phase retrieval %A Antoine Maillard %A Florent Krzakala %A Yue M. Lu %A Lenka Zdeborova %X We consider the phase retrieval problem, in which the observer wishes to recover a n-dimensional real or complex signal X⋆ from the (possibly noisy) observation of |ΦX⋆|, in which Φ is a matrix of size m×n. We consider a \emph{high-dimensional} setting where n,m→∞ with m/n=O(1), and a large class of (possibly correlated) random matrices Φ and observation channels. Spectral methods are a powerful tool to obtain approximate observations of the signal X⋆ which can be then used as initialization for a subsequent algorithm, at a low computational cost. In this paper, we extend and unify previous results and approaches on spectral methods for the phase retrieval problem. More precisely, we combine the linearization of message-passing algorithms and the analysis of the \emph{Bethe Hessian}, a classical tool of statistical physics. Using this toolbox, we show how to derive optimal spectral methods for arbitrary channel noise and right-unitarily invariant matrix Φ, in an automated manner (i.e. with no optimization over any hyperparameter or preprocessing function). %B Mathematical and Scientific Machine Learning %G eng %U https://arxiv.org/abs/2012.04524