Iteratively reweighted $\ell_1$ algorithms with extrapolation
This work addresses optimization efficiency for sparse signal recovery, but it is incremental as it builds on established extrapolation methods.
The paper tackles the problem of accelerating iteratively reweighted ℓ1 algorithms for optimization with sparsity-inducing regularizers by incorporating extrapolation techniques, and shows that the proposed algorithms outperform existing methods in CPU time and solution quality for log penalty regularized least squares problems.
Iteratively reweighted $\ell_1$ algorithm is a popular algorithm for solving a large class of optimization problems whose objective is the sum of a Lipschitz differentiable loss function and a possibly nonconvex sparsity inducing regularizer. In this paper, motivated by the success of extrapolation techniques in accelerating first-order methods, we study how widely used extrapolation techniques such as those in [4,5,22,28] can be incorporated to possibly accelerate the iteratively reweighted $\ell_1$ algorithm. We consider three versions of such algorithms. For each version, we exhibit an explicitly checkable condition on the extrapolation parameters so that the sequence generated provably clusters at a stationary point of the optimization problem. We also investigate global convergence under additional Kurdyka-$Ł$ojasiewicz assumptions on certain potential functions. Our numerical experiments show that our algorithms usually outperform the general iterative shrinkage and thresholding algorithm in [21] and an adaptation of the iteratively reweighted $\ell_1$ algorithm in [23, Algorithm 7] with nonmonotone line-search for solving random instances of log penalty regularized least squares problems in terms of both CPU time and solution quality.