In this work, we consider a class of linear ill-posed problems with operators that map from the sequence space $ \ell_r $ ($r \ge 1$) into a Banach space and in addition satisfy a conditional stability estimate in the scale of sequence spaces $ \ell_q, \, q \ge 0 $. For the regularization of such problems in the presence of deterministic noise, we consider variational regularization with a penalty functional either of the form $ \mathcal{R} =\Vert \cdot \Vert_p^p $ for some $ p > 0 $ or in form of the counting measure $\mathcal{R}_0 = \Vert \cdot \Vert_0 $. The latter case guarantees sparsity of the corresponding regularized solutions. In this framework, we present first stability and then convergence rates for suitable a priori parameter choices. The results cover the oversmoothing situation, where the desired solution does not belong to the domain of definition of the considered penalty functional. The analysis of the oversmoothing case utilizes auxiliary elements that are defined by means of hard thresholding. Such technique can also be used for post processing to guarantee sparsity.
翻译:本文研究一类线性不适定问题,其算子将序列空间$ \ell_r $ ($r \ge 1$)映射到巴拿赫空间,并在序列空间尺度$ \ell_q, \, q \ge 0 $上满足条件稳定性估计。针对含确定性噪声的此类问题正则化,我们考虑采用惩罚函数为$ \mathcal{R} =\Vert \cdot \Vert_p^p $($ p > 0 $)或计数测度$\mathcal{R}_0 = \Vert \cdot \Vert_0 $形式的变分正则化方法。后一种情形能保证相应正则化解的稀疏性。在此框架下,我们首先给出稳定性结果,随后针对合适的先验参数选择给出收敛速率。所得结果涵盖了过平滑情形,即期望解不属于所考虑惩罚函数定义域的情况。过平滑情形的分析通过硬阈值技术定义的辅助元实现,该技术亦可用于后处理以保证稀疏性。