02.08.2023

MCML at KDD 2023: One Accepted Paper
29th ACM SIGKDD International Conference on Knowledge Discovery and Data (KDD 2023). Long Beach, CA, USA, 06.08.2023–10.08.2023
We are happy to announce that MCML researchers have contributed a total of 1 paper to KDD 2023. Congrats to our researchers!
Main Track (1 paper)
Connecting the Dots — Density-Connectivity Distance unifies DBSCAN, k-Center and Spectral Clustering.
KDD 2023 - 29th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. Long Beach, CA, USA, Aug 06-10, 2023. DOI GitHub
Abstract
Despite the popularity of density-based clustering, its procedural definition makes it difficult to analyze compared to clustering methods that minimize a loss function. In this paper, we reformulate DBSCAN through a clean objective function by introducing the density-connectivity distance (dc-dist), which captures the essence of density-based clusters by endowing the minimax distance with the concept of density. This novel ultrametric allows us to show that DBSCAN, k-center, and spectral clustering are equivalent in the space given by the dc-dist, despite these algorithms being perceived as fundamentally different in their respective literatures. We also verify that finding the pairwise dc-dists gives DBSCAN clusterings across all epsilon-values, simplifying the problem of parameterizing density-based clustering. We conclude by thoroughly analyzing density-connectivity and its properties – a task that has been elusive thus far in the literature due to the lack of formal tools.
MCML Authors
#research #top-tier-work #seidl
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