Weighted nuclear norm minimization has been recently recognized as a technique for reconstruction of a low-rank matrix from compressively sampled measurements when some prior information about the column and row subspaces of the matrix is available. In this work, we study the recovery conditions and the associated recovery guarantees of weighted nuclear norm minimization when multiple weights are allowed. This setup might be used when one has access to prior subspaces forming multiple angles with the column and row subspaces of the ground-truth matrix. While existing works in this field use a single weight to penalize all the angles, we propose a multi-weight problem which is designed to penalize each angle independently using a distinct weight. Specifically, we prove that our proposed multi-weight problem is stable and robust under weaker conditions for the measurement operator than the analogous conditions for single-weight scenario and standard nuclear norm minimization. Moreover, it provides better reconstruction error than the state of the art methods. We illustrate our results with extensive numerical experiments that demonstrate the advantages of allowing multiple weights in the recovery procedure.
翻译:最近人们认识到,从压缩抽样测量中从压缩抽样测量中重建低级矩阵的技术是尽量减少加权核规范,因为事先掌握了关于该矩阵的列和行子空间的一些信息。在这项工作中,我们研究了回收条件和在允许多重重量的情况下加权核规范最小化的相关回收保障。当人们有机会利用与地面真相矩阵的列和行次空间形成多个角度的先前子空间时,可以使用这一设置。虽然该领域现有的工程使用单一重量来惩罚所有角度,但我们建议了一个多重量问题,目的是利用不同的重量独立地惩罚每个角度。具体地说,我们证明,我们提议的多重量问题在比单一重量假设和标准核规范最小化的类似条件下对测量操作者来说较为脆弱的条件下是稳定和稳健的。此外,它提供了更好的重建错误。我们用大量的数字实验来说明我们的结果,这些实验显示了在恢复程序中允许多重重量的好处。