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arxiv: 1307.5494 · v1 · pith:2N6IOTMRnew · submitted 2013-07-21 · 💻 cs.NA · cs.LG· stat.ML

On GROUSE and Incremental SVD

classification 💻 cs.NA cs.LGstat.ML
keywords grouseincrementalsubspacealgorithmapproachcertainadditionalgorithmic
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GROUSE (Grassmannian Rank-One Update Subspace Estimation) is an incremental algorithm for identifying a subspace of Rn from a sequence of vectors in this subspace, where only a subset of components of each vector is revealed at each iteration. Recent analysis has shown that GROUSE converges locally at an expected linear rate, under certain assumptions. GROUSE has a similar flavor to the incremental singular value decomposition algorithm, which updates the SVD of a matrix following addition of a single column. In this paper, we modify the incremental SVD approach to handle missing data, and demonstrate that this modified approach is equivalent to GROUSE, for a certain choice of an algorithmic parameter.

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