LGNov 4, 2014

CUR Algorithm for Partially Observed Matrices

arXiv:1411.0860v137 citations
Originality Incremental advance
AI Analysis

This work addresses a limitation in handling large matrices for applications where full data access is impractical, offering an incremental improvement in matrix completion.

The authors tackled the problem of CUR matrix decomposition requiring full matrix access by developing an algorithm for partially observed matrices, achieving perfect recovery of rank r matrices with O(n r ln r) observed entries, which improves upon existing sample complexities.

CUR matrix decomposition computes the low rank approximation of a given matrix by using the actual rows and columns of the matrix. It has been a very useful tool for handling large matrices. One limitation with the existing algorithms for CUR matrix decomposition is that they need an access to the {\it full} matrix, a requirement that can be difficult to fulfill in many real world applications. In this work, we alleviate this limitation by developing a CUR decomposition algorithm for partially observed matrices. In particular, the proposed algorithm computes the low rank approximation of the target matrix based on (i) the randomly sampled rows and columns, and (ii) a subset of observed entries that are randomly sampled from the matrix. Our analysis shows the relative error bound, measured by spectral norm, for the proposed algorithm when the target matrix is of full rank. We also show that only $O(n r\ln r)$ observed entries are needed by the proposed algorithm to perfectly recover a rank $r$ matrix of size $n\times n$, which improves the sample complexity of the existing algorithms for matrix completion. Empirical studies on both synthetic and real-world datasets verify our theoretical claims and demonstrate the effectiveness of the proposed algorithm.

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