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arxiv: 1605.07051 · v2 · pith:HJ6K77XRnew · submitted 2016-05-23 · 📊 stat.ML · cs.LG

Convergence Analysis for Rectangular Matrix Completion Using Burer-Monteiro Factorization and Gradient Descent

classification 📊 stat.ML cs.LG
keywords matrixcompletiondescentgradientkapparectangularsemidefiniteaddress
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We address the rectangular matrix completion problem by lifting the unknown matrix to a positive semidefinite matrix in higher dimension, and optimizing a nonconvex objective over the semidefinite factor using a simple gradient descent scheme. With $O( \mu r^2 \kappa^2 n \max(\mu, \log n))$ random observations of a $n_1 \times n_2$ $\mu$-incoherent matrix of rank $r$ and condition number $\kappa$, where $n = \max(n_1, n_2)$, the algorithm linearly converges to the global optimum with high probability.

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