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A Measurement-Efficient Low-Rank Matrix Recovery Approach

机译:一种有效测量的低秩矩阵恢复方法

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This paper presents a novel low-rank matrix recovery approach that jointly performs measurement collection and matrix estimation to improve the overall sample efficiency under unknown rank information. It builds on a key observation that the minimum number of measurements needed for matrix rank estimation can be much less than that for matrix recovery. Such a gap in measurement requirements is first delineated in closes form through empirical quantification. Then, capitalizing on this quantified gap on measurements, a two-step procedure is developed for adaptive measurement collection. The actual rank of the matrix is estimated in the first step, which informs the number of measurements to be collected in the second step for low-rank matrix recovery. Simulations corroborate that our approach can considerably reduce the total number of required measurements for matrix recovery in practice. The improvement in sample efficiency is particularly pronounced for large-scale applications where low-rank matrix estimation is of great relevance.
机译:本文提出了一种新颖的低秩矩阵恢复方法,该方法可以联合执行测量收集和矩阵估计,以提高未知秩信息下的整体样本效率。它建立在一个关键的观察之上,即矩阵秩估计所需的最小测量数量可能远小于矩阵恢复所需要的最小数量。首先通过经验量化以封闭形式描述测量需求中的这种差距。然后,利用此量化的测量差距,开发了两步过程来进行自适应测量收集。在第一步中估计矩阵的实际等级,这告知第二步要收集的测量值的数量,以进行低等级矩阵恢复。模拟证实了我们的方法可以大大减少实际操作中基质回收所需的测量总数。对于低秩矩阵估计非常重要的大规模应用,样本效率的提高尤其明显。

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