Efficient Signed Graph Sampling via Balancing & Gershgorin Disc Perfect Alignment
Chinthaka Dinesh, Gene Cheung, Saghar Bagheri, Ivan V. Bajic

TL;DR
This paper introduces a fast signed graph sampling method that effectively handles datasets with anti-correlations by leveraging balanced signed graphs and Gershgorin disc alignment, improving sampling accuracy.
Contribution
It proposes a novel linear-time signed graph sampling approach based on balanced graph concepts and Gershgorin disc perfect alignment, extending sampling techniques to signed graphs with anti-correlations.
Findings
Outperforms existing sampling schemes on various datasets.
Effectively captures anti-correlations in graph data.
Improves graph filtering accuracy for signed graphs.
Abstract
A basic premise in graph signal processing (GSP) is that a graph encoding pairwise (anti-)correlations of the targeted signal as edge weights is exploited for graph filtering. However, existing fast graph sampling schemes are designed and tested only for positive graphs describing positive correlations. In this paper, we show that for datasets with strong inherent anti-correlations, a suitable graph contains both positive and negative edge weights. In response, we propose a linear-time signed graph sampling method centered on the concept of balanced signed graphs. Specifically, given an empirical covariance data matrix , we first learn a sparse inverse matrix (graph Laplacian) corresponding to a signed graph . We define the eigenvectors of Laplacian for a balanced signed graph -- approximating via…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Bayesian Modeling and Causal Inference
MethodsALIGN
