Locally Weighted Ensemble Clustering
Dong Huang, Chang-Dong Wang, Jian-Huang Lai

TL;DR
This paper introduces a locally weighted ensemble clustering method that evaluates cluster reliability using ensemble-driven uncertainty estimation, improving robustness by exploiting local diversity without relying on data features.
Contribution
It proposes a novel local weighting strategy based on cluster uncertainty, enhancing ensemble clustering performance over existing global weighting methods.
Findings
Outperforms state-of-the-art ensemble clustering methods.
Effectively exploits local cluster diversity.
Demonstrates robustness without data feature access.
Abstract
Due to its ability to combine multiple base clusterings into a probably better and more robust clustering, the ensemble clustering technique has been attracting increasing attention in recent years. Despite the significant success, one limitation to most of the existing ensemble clustering methods is that they generally treat all base clusterings equally regardless of their reliability, which makes them vulnerable to low-quality base clusterings. Although some efforts have been made to (globally) evaluate and weight the base clusterings, yet these methods tend to view each base clustering as an individual and neglect the local diversity of clusters inside the same base clustering. It remains an open problem how to evaluate the reliability of clusters and exploit the local diversity in the ensemble to enhance the consensus performance, especially in the case when there is no access to…
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