It is shown that the SS PEW method based on social sparsity combined with the proposed method performs comparable to top methods from the consistent class, but at a computational cost of one order of magnitude lower.
Authors
Ondřej Mokrý
4 papers
P. Rajmic
6 papers
Pavel Záviška
5 papers
References18 items
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