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DBSCAN++: Towards fast and scalable density clustering

Machine Learning 2019-05-21 v3 Machine Learning

Abstract

DBSCAN is a classical density-based clustering procedure with tremendous practical relevance. However, DBSCAN implicitly needs to compute the empirical density for each sample point, leading to a quadratic worst-case time complexity, which is too slow on large datasets. We propose DBSCAN++, a simple modification of DBSCAN which only requires computing the densities for a chosen subset of points. We show empirically that, compared to traditional DBSCAN, DBSCAN++ can provide not only competitive performance but also added robustness in the bandwidth hyperparameter while taking a fraction of the runtime. We also present statistical consistency guarantees showing the trade-off between computational cost and estimation rates. Surprisingly, up to a certain point, we can enjoy the same estimation rates while lowering computational cost, showing that DBSCAN++ is a sub-quadratic algorithm that attains minimax optimal rates for level-set estimation, a quality that may be of independent interest.

Keywords

Cite

@article{arxiv.1810.13105,
  title  = {DBSCAN++: Towards fast and scalable density clustering},
  author = {Jennifer Jang and Heinrich Jiang},
  journal= {arXiv preprint arXiv:1810.13105},
  year   = {2019}
}
R2 v1 2026-06-23T04:58:38.646Z