English

Flexible sparse regularization

Numerical Analysis 2016-12-21 v1

Abstract

The seminal paper of Daubechies, Defrise, DeMol made clear that p\ell^p spaces with p[1,2)p\in [1,2) and pp-powers of the corresponding norms are appropriate settings for dealing with reconstruction of sparse solutions of ill-posed problems by regularization. It seems that the case p=1p=1 provides the best results in most of the situations compared to the cases p(1,2)p\in (1,2). An extensive literature gives great credit also to using p\ell^p spaces with p(0,1)p\in (0,1) together with the corresponding quasinorms, although one has to tackle challenging numerical problems raised by the non-convexity of the quasi-norms. In any of these settings, either super, linear or sublinear, the question of how to choose the exponent pp has been not only a numerical issue, but also a philosophical one. In this work we introduce a more flexible way of sparse regularization by varying exponents. We introduce the corresponding functional analytic framework, that leaves the setting of normed spaces but works with so-called F-norms. One curious result is that there are F-norms which generate the 1\ell^1 space, but they are strictly convex, while the 1\ell^1-norm is just convex.

Keywords

Cite

@article{arxiv.1601.04429,
  title  = {Flexible sparse regularization},
  author = {Dirk A. Lorenz and Elena Resmerita},
  journal= {arXiv preprint arXiv:1601.04429},
  year   = {2016}
}
R2 v1 2026-06-22T12:31:28.910Z