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Exact Low-rank Matrix Completion via Convex Optimization

机译:通过凸优化完成精确的低级矩阵完成

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Suppose that one observes an incomplete subset of entries selected uniformly at random from a low-rank matrix. When is it possible to complete the matrix and recover the entries that have not been seen? We show that in very general settings, one can perfectly recover all of the missing entries from a sufficiently large random subset by solving a convex programming problem. This program finds the matrix with the minimum nuclear norm agreeing with the observed entries. The techniques used in this analysis draw upon parallels in the field of compressed sensing, demonstrating that objects other than signals and images can be perfectly reconstructed from very limited information.
机译:假设一个人从低秩矩阵观察以随机选择均匀选择的条目的不完整子集。什么时候可以完成矩阵并恢复尚未看到的条目?我们展示在非常一般的设置中,通过解决凸编程问题,可以完全从足够大的随机子集中完全恢复所有缺失的条目。该计划找到了矩阵,其中最低核规范与观察到的条目同意。在该分析中使用的技术在压缩传感器领域中绘制了相似之处,证明了信号和图像以外的对象可以从非常有限的信息完全重建。

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