2020
DOI: 10.48550/arxiv.2008.10065
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Kernel-based Graph Learning from Smooth Signals: A Functional Viewpoint

Xingyue Pu,
Siu Lun Chau,
Xiaowen Dong
et al.
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“…, [8], [50], [51], which is added to control the distribution of the off-diagonal entries in L. Another possible choice of the regularization term is h(L) = −α1 log(diag(L)), which is the logarithmic barrier on the node degrees as proposed in [6]. It guarantees that each node has at least one edge with another node and the sparsity of the resulting graph can be controlled by the parameter α > 0.…”
Section: A Problem Formulationmentioning
confidence: 99%
“…, [8], [50], [51], which is added to control the distribution of the off-diagonal entries in L. Another possible choice of the regularization term is h(L) = −α1 log(diag(L)), which is the logarithmic barrier on the node degrees as proposed in [6]. It guarantees that each node has at least one edge with another node and the sparsity of the resulting graph can be controlled by the parameter α > 0.…”
Section: A Problem Formulationmentioning
confidence: 99%