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Fast Sampling of Graph Signals with Noise via Neumann Series Conversion

Citation Author(s):
Gene Cheung; Yongchao Wang
Submitted by:
Fen wang
Last updated:
8 May 2019 - 12:17pm
Document Type:
Poster
Document Year:
2019
Event:
Presenters:
Gene Cheung
Paper Code:
ICASSP19005
 

Graph sampling with independent noise towards minimum mean square error (MMSE)
leads to the known A-optimality criterion, which is computation-intensive to
evaluate and NP-hard to optimize. In this paper, we propose a new low complexity
sampling strategy based on Neumann series that circumvents large matrix
inversion and eigen-decomposition. We first prove that a DC-shifted A-optimality
criterion is equivalent to an objective computed using the inverse of a
sub-matrix of an ideal graph low-pass (LP) filter. The LP filter matrix can be
approximated efficiently via fast Graph Fourier Transform (FGFT).
Using the shifted A-optimality objective as a proxy, we then propose a fast
algorithm to greedily select samples one-by-one based on a matrix inversion
lemma with simple matrix updates. We show that the obtained solution has a
performance upper bound via super-modularity analysis. Simulation results show
that our proposed sampling strategy has lower complexity and outperforms
several existing deterministic sampling schemes.

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