Inhomogeneous graph trend filtering via a l2,0-norm cardinality penalty
Inhomogeneous graph trend filtering via a l2,0-norm cardinality penalty
We study estimation of piecewise smooth signals over a graph. We propose a l2,0-norm penalized Graph Trend Filtering (GTF) model to estimate piecewise smooth graph signals that exhibit inhomogeneous levels of smoothness across the nodes. We prove that the proposed GTF model is simultaneously a k-means clustering on the signal over the nodes and a minimum graph cut on the edges of the graph, where the clustering and the cut share the same assignment matrix. We propose two methods to solve the proposed GTF model: a spectral decomposition method and a method based on simulated annealing. In the experiment on synthetic and real-world datasets, we show that the proposed GTF model has a better performances compared with existing approaches on the tasks of denoising, support recovery and semi-supervised classification. We also show that the proposed GTF model can be solved more efficiently than existing models for the dataset with a large edge set.
graph signal processing, graph trend filtering, l_2,0-norm, simulated annealing, spectral method
353-365
Huang, Xiaoqing
9e7d79f2-1ccb-40db-ae87-b6a1f95acc0a
Ang, Andersen
ed509ecd-39a3-4887-a709-339fdaded867
Huang, Kun
b0602d21-21b8-4e73-a942-2d7a8f96caf6
Zhang, Jie
6bad4e75-40e0-4ea3-866d-58c8018b225a
Wang, Yijie
52f11931-664c-4fc1-8d0e-b70a1d956f46
21 March 2025
Huang, Xiaoqing
9e7d79f2-1ccb-40db-ae87-b6a1f95acc0a
Ang, Andersen
ed509ecd-39a3-4887-a709-339fdaded867
Huang, Kun
b0602d21-21b8-4e73-a942-2d7a8f96caf6
Zhang, Jie
6bad4e75-40e0-4ea3-866d-58c8018b225a
Wang, Yijie
52f11931-664c-4fc1-8d0e-b70a1d956f46
Huang, Xiaoqing, Ang, Andersen, Huang, Kun, Zhang, Jie and Wang, Yijie
(2025)
Inhomogeneous graph trend filtering via a l2,0-norm cardinality penalty.
IEEE Transactions on Signal and Information Processing over Networks, 11, .
(doi:10.1109/TSIPN.2025.3553025).
Abstract
We study estimation of piecewise smooth signals over a graph. We propose a l2,0-norm penalized Graph Trend Filtering (GTF) model to estimate piecewise smooth graph signals that exhibit inhomogeneous levels of smoothness across the nodes. We prove that the proposed GTF model is simultaneously a k-means clustering on the signal over the nodes and a minimum graph cut on the edges of the graph, where the clustering and the cut share the same assignment matrix. We propose two methods to solve the proposed GTF model: a spectral decomposition method and a method based on simulated annealing. In the experiment on synthetic and real-world datasets, we show that the proposed GTF model has a better performances compared with existing approaches on the tasks of denoising, support recovery and semi-supervised classification. We also show that the proposed GTF model can be solved more efficiently than existing models for the dataset with a large edge set.
Text
2304.05223v4
- Accepted Manuscript
More information
Accepted/In Press date: 5 March 2025
Published date: 21 March 2025
Keywords:
graph signal processing, graph trend filtering, l_2,0-norm, simulated annealing, spectral method
Identifiers
Local EPrints ID: 501156
URI: http://eprints.soton.ac.uk/id/eprint/501156
ISSN: 2373-776X
PURE UUID: 817d8463-a66c-4076-8873-c9652cfeee94
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Date deposited: 27 May 2025 16:55
Last modified: 22 Aug 2025 02:38
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Contributors
Author:
Xiaoqing Huang
Author:
Andersen Ang
Author:
Kun Huang
Author:
Jie Zhang
Author:
Yijie Wang
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