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CORR
2016
Springer

Compressive PCA on Graphs

8 years 8 months ago
Compressive PCA on Graphs
Randomized algorithms reduce the complexity of low-rank recovery methods only w.r.t dimension p of a big dataset Y 2 <p⇥n . However, the case of large n is cumbersome to tackle without sacrificing the recovery. The recently introduced Fast Robust PCA on Graphs (FRPCAG) approximates a recovery method for matrices which are low-rank on graphs constructed between their rows and columns. In this paper we provide a novel framework, Compressive PCA on Graphs (CPCA) for an approximate recovery of such data matrices from sampled measurements. We introduce a RIP condition for low-rank matrices on graphs which enables efficient sampling of the rows and columns to perform FRPCAG on the sampled matrix. Several efficient, parallel and parameter-free decoders are presented along with their theoretical analysis for the low-rank recovery and clustering applications of PCA. On a single core machine, CPCA gains a speed up of p/k over FRPCAG, where k ⌧ p is the subspace dimension. Numerically,...
Nauman Shahid, Nathanael Perraudin, Gilles Puy, Pi
Added 01 Apr 2016
Updated 01 Apr 2016
Type Journal
Year 2016
Where CORR
Authors Nauman Shahid, Nathanael Perraudin, Gilles Puy, Pierre Vandergheynst
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