113 research outputs found
A Proximal-Gradient Homotopy Method for the Sparse Least-Squares Problem
We consider solving the -regularized least-squares (-LS)
problem in the context of sparse recovery, for applications such as compressed
sensing. The standard proximal gradient method, also known as iterative
soft-thresholding when applied to this problem, has low computational cost per
iteration but a rather slow convergence rate. Nevertheless, when the solution
is sparse, it often exhibits fast linear convergence in the final stage. We
exploit the local linear convergence using a homotopy continuation strategy,
i.e., we solve the -LS problem for a sequence of decreasing values of
the regularization parameter, and use an approximate solution at the end of
each stage to warm start the next stage. Although similar strategies have been
studied in the literature, there have been no theoretical analysis of their
global iteration complexity. This paper shows that under suitable assumptions
for sparse recovery, the proposed homotopy strategy ensures that all iterates
along the homotopy solution path are sparse. Therefore the objective function
is effectively strongly convex along the solution path, and geometric
convergence at each stage can be established. As a result, the overall
iteration complexity of our method is for finding an
-optimal solution, which can be interpreted as global geometric rate
of convergence. We also present empirical results to support our theoretical
analysis
Low Complexity Regularization of Linear Inverse Problems
Inverse problems and regularization theory is a central theme in contemporary
signal processing, where the goal is to reconstruct an unknown signal from
partial indirect, and possibly noisy, measurements of it. A now standard method
for recovering the unknown signal is to solve a convex optimization problem
that enforces some prior knowledge about its structure. This has proved
efficient in many problems routinely encountered in imaging sciences,
statistics and machine learning. This chapter delivers a review of recent
advances in the field where the regularization prior promotes solutions
conforming to some notion of simplicity/low-complexity. These priors encompass
as popular examples sparsity and group sparsity (to capture the compressibility
of natural signals and images), total variation and analysis sparsity (to
promote piecewise regularity), and low-rank (as natural extension of sparsity
to matrix-valued data). Our aim is to provide a unified treatment of all these
regularizations under a single umbrella, namely the theory of partial
smoothness. This framework is very general and accommodates all low-complexity
regularizers just mentioned, as well as many others. Partial smoothness turns
out to be the canonical way to encode low-dimensional models that can be linear
spaces or more general smooth manifolds. This review is intended to serve as a
one stop shop toward the understanding of the theoretical properties of the
so-regularized solutions. It covers a large spectrum including: (i) recovery
guarantees and stability to noise, both in terms of -stability and
model (manifold) identification; (ii) sensitivity analysis to perturbations of
the parameters involved (in particular the observations), with applications to
unbiased risk estimation ; (iii) convergence properties of the forward-backward
proximal splitting scheme, that is particularly well suited to solve the
corresponding large-scale regularized optimization problem
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