Despite the popularity of low-rank matrix completion, the majority of its theory has been developed under the assumption of random observation patterns, whereas very little is known about the practically relevant case of non-random patterns. Specifically, a fundamental yet largely open question is to describe patterns that allow for unique or finitely many completions. This paper provides two such families of patterns for any rank. A key to achieving this is a novel formulation of low-rank matrix completion in terms of Plucker coordinates, the latter a traditional tool in computer vision. This connection is of potential significance to a wide family of matrix and subspace learning problems with incomplete data.
翻译:尽管低级别矩阵的完成广受欢迎,但其理论大多是在随机观测模式的假设下形成的,而对于非随机模式这一实际相关的案例却知之甚少,具体而言,一个基本但基本上尚未解决的问题是描述允许独特或有限数量完成的模式,本文件为任何级别提供了两种模式的组合,而实现这一目的的关键是在普勒克坐标方面采用低级别矩阵的完成新颖形式,后者是计算机视觉方面的一种传统工具,这种联系对于大量缺乏数据的矩阵和次空间学习问题具有潜在的重要意义。