Directed network comparison using motifs
January 12, 2024 Β· Declared Dead Β· π Entropy
"No code URL or promise found in abstract"
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Authors
Chenwei Xie, Qiao Ke, Haoyu Chen, Chuang Liu, Xiu-Xiu Zhan
arXiv ID
2401.06445
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
0
Venue
Entropy
Last Checked
4 months ago
Abstract
Analyzing and characterizing the differences between networks is a fundamental and challenging problem in network science. Previously, most network comparison methods that rely on topological properties have been restricted to measuring differences between two undirected networks. However, many networks, such as biological networks, social networks, and transportation networks, exhibit inherent directionality and higher-order attributes that should not be ignored when comparing networks. Therefore, we propose a motif-based directed network comparison method that captures local, global, and higher-order differences between two directed networks. Specifically, we first construct a motif distribution vector for each node, which captures the information of a node's involvement in different directed motifs. Then, the dissimilarity between two directed networks is defined on the basis of a matrix which is composed of the motif distribution vector of every node and Jensen-Shannon divergence. The performance of our method is evaluated via the comparison of six real directed networks with their null models as well as their perturbed networks based on edge perturbation. Our method is superior to the state-of-the-art baselines and is robust with different parameter settings.
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