articleIEEE Transactions on Information TheoryMay 27, 2010Closed access

Matrix Completion From a Few Entries

Stanford University

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Abstract

Let M be an n¿ × n matrix of rank r, and assume that a uniformly random subset E of its entries is observed. We describe an efficient algorithm, which we call OptSpace, that reconstructs M from |E| = O(rn) observed entries with relative root mean square error 1/2 RMSE ¿ C(¿) (nr/|E|) 1/2 with probability larger than 1 - 1/n 3 . Further, if r = O(1) and M is sufficiently unstructured, then OptSpace reconstructs it exactly from |E| = O(n log n) entries with probability larger than 1 - 1/n 3 . This settles (in the case of bounded rank) a question left open by Candes and Recht and improves over the guarantees for their reconstruction algorithm. The complexity of our algorithm is O(|E|r log n), which opens the way…

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Authors

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Topics & keywords

Keywords
  • Matrix completion
  • Computer science
  • Matrix (chemical analysis)
  • Mathematics
  • Algorithm
  • Combinatorics
  • Physics
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