SCOREH+: A High-Order Node Proximity Spectral Clustering on Ratios-of-Eigenvectors Algorithm for Community Detection
Yanhui Zhu, Fang Hu, Lei Hsin Kuo, Jia liu

TL;DR
SCOREH+ is a novel spectral clustering algorithm that leverages high-order node proximity and eigenvector ratios to improve community detection accuracy in complex networks, outperforming existing methods on real and synthetic data.
Contribution
The paper introduces SCOREH+, an advanced spectral clustering method that incorporates high-order transitivity and eigenvector spectrum extension for enhanced community detection.
Findings
SCOREH+ outperforms state-of-the-art algorithms on real-world networks.
The method effectively detects communities in noisy synthetic networks.
Tuning RBF parameters improves community detection performance.
Abstract
The research on complex networks has achieved significant progress in revealing the mesoscopic features of networks. Community detection is an important aspect of understanding real-world complex systems. We present in this paper a High-order node proximity Spectral Clustering on Ratios-of-Eigenvectors (SCOREH+) algorithm for locating communities in complex networks. The algorithm improves SCORE and SCORE+ and preserves high-order transitivity information of the network affinity matrix. We optimize the high-order proximity matrix from the initial affinity matrix using the Radial Basis Functions (RBFs) and Katz index. In addition to the optimization of the Laplacian matrix, we implement a procedure that joins an additional eigenvector (the leading eigenvector) to the spectrum domain for clustering if the network is considered to be a "weak signal" graph. The algorithm has…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mental Health Research Topics
