Enhanced Ensemble Clustering via Fast Propagation of Cluster-wise Similarities
Dong Huang, Chang-Dong Wang, Hongxing Peng, Jianhuang Lai, Chee-Keong, Kwoh

TL;DR
This paper introduces a fast propagation method for ensemble clustering that captures multi-scale relationships by leveraging cluster-wise similarities and random walks, improving clustering accuracy and efficiency.
Contribution
It proposes a novel ensemble clustering approach using random walk-based propagation of cluster similarities to explore higher-level and multi-scale relationships.
Findings
Outperforms existing methods in accuracy on real-world datasets.
Efficiently captures multi-scale relationships through random walk propagation.
Enhances clustering robustness and interpretability.
Abstract
Ensemble clustering has been a popular research topic in data mining and machine learning. Despite its significant progress in recent years, there are still two challenging issues in the current ensemble clustering research. First, most of the existing algorithms tend to investigate the ensemble information at the object-level, yet often lack the ability to explore the rich information at higher levels of granularity. Second, they mostly focus on the direct connections (e.g., direct intersection or pair-wise co-occurrence) in the multiple base clusterings, but generally neglect the multi-scale indirect relationship hidden in them. To address these two issues, this paper presents a novel ensemble clustering approach based on fast propagation of cluster-wise similarities via random walks. We first construct a cluster similarity graph with the base clusters treated as graph nodes and the…
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