Low-rank matrix models have been universally useful for numerous applications, from classical system identification to more modern matrix completion in signal processing and statistics. The nuclear norm has been employed as a convex surrogate of the low-rankness since it induces a low-rank solution to inverse problems. While the nuclear norm for low rankness has an excellent analogy with the $\ell_1$ norm for sparsity through the singular value decomposition, other matrix norms also induce low-rankness. Particularly as one interprets a matrix as a linear operator between Banach spaces, various tensor product norms generalize the role of the nuclear norm. We provide a tensor-norm-constrained estimator for the recovery of approximately low-rank matrices from local measurements corrupted with noise. A tensor-norm regularizer is designed to adapt to the local structure. We derive statistical analysis of the estimator over matrix completion and decentralized sketching by applying Maurey's empirical method to tensor products of Banach spaces. The estimator provides a near-optimal error bound in a minimax sense and admits a polynomial-time algorithm for these applications.
翻译:从古典系统识别到更现代的信号处理和统计矩阵完成,低级矩阵模型对许多应用都普遍有用,从古典系统识别到更现代的信号处理和统计矩阵完成,核规范一直被用作低级的螺旋替代器,因为低级标准导致对反问题的低级解决办法。低级的核规范与单值分解造成宽度的1美元标准非常相似,而其他矩阵规范也导致低级。特别是当人们将一个矩阵解释为Banach空间之间的线性操作者时,各种高压产品规范将核规范的作用普遍化。我们为从因噪音而腐蚀的地方测量中恢复大约低级的低级矩阵提供了高压控制估计器。高压调节器旨在适应当地结构。我们通过将Maurey的经验性方法应用于Banach空间的微粒产品,对矩阵完成和分散的草图进行统计分析,从而得出关于顶点的统计分析结果。估计器提供了一种近于最优化的错误,在微轴感感中,并承认了这些应用的多元性算法。</s>