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Optimal Combination of Linear and Spectral Estimators for Generalized Linear Models

Abstract

We study the problem of recovering an unknown signal x\boldsymbol x given measurements obtained from a generalized linear model with a Gaussian sensing matrix. Two popular solutions are based on a linear estimator x^L\hat{\boldsymbol x}^{\rm L} and a spectral estimator x^s\hat{\boldsymbol x}^{\rm s}. The former is a data-dependent linear combination of the columns of the measurement matrix, and its analysis is quite simple. The latter is the principal eigenvector of a data-dependent matrix, and a recent line of work has studied its performance. In this paper, we show how to optimally combine x^L\hat{\boldsymbol x}^{\rm L} and x^s\hat{\boldsymbol x}^{\rm s}. At the heart of our analysis is the exact characterization of the joint empirical distribution of (x,x^L,x^s)(\boldsymbol x, \hat{\boldsymbol x}^{\rm L}, \hat{\boldsymbol x}^{\rm s}) in the high-dimensional limit. This allows us to compute the Bayes-optimal combination of x^L\hat{\boldsymbol x}^{\rm L} and x^s\hat{\boldsymbol x}^{\rm s}, given the limiting distribution of the signal x\boldsymbol x. When the distribution of the signal is Gaussian, then the Bayes-optimal combination has the form θx^L+x^s\theta\hat{\boldsymbol x}^{\rm L}+\hat{\boldsymbol x}^{\rm s} and we derive the optimal combination coefficient. In order to establish the limiting distribution of (x,x^L,x^s)(\boldsymbol x, \hat{\boldsymbol x}^{\rm L}, \hat{\boldsymbol x}^{\rm s}), we design and analyze an Approximate Message Passing (AMP) algorithm whose iterates give x^L\hat{\boldsymbol x}^{\rm L} and approach x^s\hat{\boldsymbol x}^{\rm s}. Numerical simulations demonstrate the improvement of the proposed combination with respect to the two methods considered separately.

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