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Keywords
(11)
a priori knowledge
Compressive Sampling
Covariance Matrix
errors-in-variab...
Linear Regression
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Signal Processing
Sparse Matrices
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Total Least Square
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Weighted and structured sparse total least-squares for perturbed compressive sampling
Weighted and structured sparse total least-squares for perturbed compressive sampling,10.1109/ICASSP.2011.5947177,Hao Zhu,Georgios B. Giannakis,Geert
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Weighted and structured sparse total least-squares for perturbed compressive sampling
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Citations: 1
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Hao Zhu
,
Georgios B. Giannakis
,
Geert Leus
Solving
linear regression
problems based on the total least-squares (TLS) criterion has well-documented merits in various applications, where perturbations appear both in the data vector as well as in the regression matrix. Weighted and structured generalizations of the TLS approach are further motivated in several
signal processing
and
system identification
related problems. On the other hand, modern
compressive sampling
and
variable selection
algorithms account for perturbations of the data vector, but not those affecting the regression matrix. The present paper addresses also the latter by introducing a weighted and structured sparse (S-) TLS formulation to exploit
a priori knowledge
on both types of perturbations, and on the sparsity of the unknown vector. The resultant novel approach is further able to cope with sparse, under-determined errors-in-variables models with structured and correlated perturbations, while allowing for efficient sub-optimum solvers. Simulated tests demonstrate the approach, and especially its ability to reliably recover the support of unknown sparse vectors.
Conference:
International Conference on Acoustics, Speech, and Signal Processing - ICASSP
, pp. 3792-3795, 2011
DOI:
10.1109/ICASSP.2011.5947177
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Citation Context
(1)
...1Tall matriceswithfullcolumnrankcanbe handled tooforblockdiagonal weight matrices typically adopted with separable structures; see also [
32
]...
Hao Zhu
,
et al.
Sparsity-Cognizant Total Least-Squares for Perturbed Compressive Sampl...
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Citations
(1)
Sparsity-Cognizant Total Least-Squares for Perturbed Compressive Sampling
(
Citations: 2
)
Hao Zhu
,
Geert Leus
,
Georgios B. Giannakis
Journal:
IEEE Transactions on Signal Processing - TSP
, vol. 59, no. 5, pp. 2002-2016, 2011