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Weighted Low-Rank Approximation Nathan Srebro and Tommi Jaakkola ICML 2003. Presented by: Mingyuan Zhou Duke University, ECE February 18, 2011. Outline. Introduction Low rank matrix factorization Missing values and an EM procedure Low rank logistic regression Experimental results
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Weighted Low-Rank ApproximationNathan Srebro and Tommi JaakkolaICML 2003 Presented by: Mingyuan Zhou Duke University, ECE February 18, 2011
Outline • Introduction • Low rank matrix factorization • Missing values and an EM procedure • Low rank logistic regression • Experimental results • Conclusions
Introduction • Factor model • Weighted norms • Efficient optimization methods
Low rank matrix factorization • Objective function • Solutions ( = 1)
Low rank matrix factorization • Solutions
Low rank matrix factorization • Since are unlikely to be diagonalizable for all rows, The critical points of the weighted low-rank approximation problem lack the eigenvector structure of the unweighted case. • Another implication of this is that the incremental structure of unweighted low-rank approximations is lost: an optimal rank-k factorization cannot necessarily be extended to an optimal rank-(k + 1) factorization.
Missing values and an EM procedure • Initializing X with A or 0 • Initializing X with 0 and let