Science
Detecting Hierarchical Clusters and Estimating their Modularity Directly from Dendrograms
Key Points
arXiv:2605.26268v2 Announce Type: replace Abstract: Identifying possible clusters in datasets and estimating their hierarchical modularity are central tasks in pattern recognition. In the present work, concepts and methodologies are described for performing these tasks while considering only the density of mergings obtained from hierarchical representations (dendrograms) of data inter-relationship along a scale variable. More specifically, the mergings of subclusters along the scale variable...
arXiv:2605.26268v2 Announce Type: replace
Abstract: Identifying possible clusters in datasets and estimating their hierarchical modularity are central tasks in pattern recognition. In the present work, concepts and methodologies are described for performing these tasks while considering only the density of mergings obtained from hierarchical representations (dendrograms) of data inter-relationship along a scale variable. More specifically, the mergings of subclusters along the scale variable are obtained, yielding a respective merging density function. After this function is balanced along the scale variable, peak detection is applied in order to estimate, within a specified resolution, the respective hierarchical clusters and their hierarchical modularity. The potential of the reported approach is illustrated for some types of data and dendrograms, and the possibility of recursive cluster detection is also considered.