Clustering Based on Density Propagation and Subcluster Merging
We propose the DPSM method, a density-based node clustering approach that automatically determines the number of clusters and can be applied in both data space and graph space. Unlike traditional density-based clustering methods, which necessitate calculating the distance between any two nodes, our...
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Zusammenfassung: | We propose the DPSM method, a density-based node clustering approach that
automatically determines the number of clusters and can be applied in both data
space and graph space. Unlike traditional density-based clustering methods,
which necessitate calculating the distance between any two nodes, our proposed
technique determines density through a propagation process, thereby making it
suitable for a graph space. In DPSM, nodes are partitioned into small clusters
based on propagated density. The partitioning technique has been proved to be
sound and complete. We then extend the concept of spectral clustering from
individual nodes to these small clusters, while introducing the CluCut measure
to guide cluster merging. This measure is modified in various ways to account
for cluster properties, thus provides guidance on when to terminate the merging
process. Various experiments have validated the effectiveness of DOSM and the
accuracy of these conclusions. |
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DOI: | 10.48550/arxiv.2411.01780 |