Johannes Schneider, Michael Elkin, et al.
Theoretical Computer Science
Clustering offers significant insights in data analysis. Density-based algorithms have emerged as flexible and efficient techniques, able to discover high-quality and potentially irregularly shaped clusters. Here, we present scalable density-based clustering algorithms using random projections. Our clustering methodology achieves a speedup of two orders of magnitude compared with equivalent state-of-art density-based techniques, while offering analytical guarantees on the clustering quality in Euclidean space. Moreover, it does not introduce difficult to set parameters. We provide a comprehensive analysis of our algorithms and comparison with existing density-based algorithms.
Johannes Schneider, Michael Elkin, et al.
Theoretical Computer Science
Michalis Vlachos, Vasileios Vasileiadis, et al.
IBM J. Res. Dev
Johannes Schneider, Alexandru Caracas
IET Wireless Sensor Systems
Anastasios Zouzias, Michalis Vlachos
EDBT 2018