Iteratively Reweighted Least Squares Minimization for Sparse Recovery

作者:Daubechies Ingrid*; Devore Ronald; Fornasier Massimo; Guentuerk C Sinan
来源:Communications on Pure and Applied Mathematics, 2010, 63(1): 1-38.
DOI:10.1002/cpa.20303

摘要

Under certain conditions (known as the restricted isometry property, or RIP) on the m x N matrix Phi (where m < N), vectors x is an element of R(N) that arc sparse (i.e., have most of their entries equal to 0) can be recovered exactly from y := Phi x even though Phi(-1) (y) is typically an (N-m)-dimensional hyperplane; in addition x is then equal to the element in Phi(-1) (y) of minimal l(1)-norm. This minimal element can be identified via linear programming algorithms. We study an alternative method of determining x, as the limit of an iteratively reweighted least squares (IRLS) algorithm. The main step of this IRLS finds, for a given weight vector w, the element in Phi(-1) (y) with smallest l(2)(w)-norm. If x((n)) is the solution at iteration step n, then the new weight w((n)) is defined by w(i)((n)) := [|x(i)((n))|(2) + epsilon(2)(n)](-1/2), i = 1,...,N, for a decreasing sequence of adaptively defined epsilon(n); this updated weight is then used to obtain x((n+1)) and the process is repeated. We prove that when Phi satisfies the RIP conditions, the sequence x((n)) converges for all y, regardless of whether Phi(-1) (y) contains a sparse vector. If there is a sparse vector in Phi(-1) (y), then the limit is this sparse vector, and when x((n)) is sufficiently close to the limit, the remaining steps of the algorithm converge exponentially fast (linear convergence in the terminology of numerical optimization). The same algorithm with the "heavier" weight w(i)((n)) = [|x(i)((n))|(2) + epsilon(2)(n)](-1+tau/2), i = 1,...,N, where 0 < tau < 1, can recover sparse solutions as well; more importantly, we show its local convergence is superlinear and approaches a quadratic rate for tau approaching 0.

  • 出版日期2010-1