Stable and consistent density-based clustering

We present a multiscale, consistent approach to density-based clustering that satisfies stability theorems -- in both the input data and in the parameters -- which hold without distributional assumptions. The stability in the input data is with respect to the Gromov--Hausdorff--Prokhorov distance on metric probability spaces and interleaving distances between (multi-parameter) hierarchical clusterings we introduce. We prove stability results for standard simplification procedures for hierarchical clusterings, which can be combined with our approach to yield a stable flat clustering algorithm. We illustrate the stability of the approach with computational examples. Our framework is based on the concepts of persistence and interleaving distance from Topological Data Analysis.
View on arXiv@article{rolle2025_2005.09048, title={ Stable and consistent density-based clustering via multiparameter persistence }, author={ Alexander Rolle and Luis Scoccola }, journal={arXiv preprint arXiv:2005.09048}, year={ 2025 } }