On Metric DBSCAN with Low Doubling Dimension
February 27, 2020 Β· Declared Dead Β· π International Joint Conference on Artificial Intelligence
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Authors
Hu Ding, Fan Yang
arXiv ID
2002.11933
Category
cs.CG: Computational Geometry
Cross-listed
cs.DS
Citations
4
Venue
International Joint Conference on Artificial Intelligence
Last Checked
3 months ago
Abstract
The density based clustering method {\em Density-Based Spatial Clustering of Applications with Noise (DBSCAN)} is a popular method for outlier recognition and has received tremendous attention from many different areas. A major issue of the original DBSCAN is that the time complexity could be as large as quadratic. Most of existing DBSCAN algorithms focus on developing efficient index structures to speed up the procedure in low-dimensional Euclidean space. However, the research of DBSCAN in high-dimensional Euclidean space or general metric space is still quite limited, to the best of our knowledge. In this paper, we consider the metric DBSCAN problem under the assumption that the inliers (excluding the outliers) have a low doubling dimension. We apply a novel randomized $k$-center clustering idea to reduce the complexity of range query, which is the most time consuming step in the whole DBSCAN procedure. Our proposed algorithms do not need to build any complicated data structures and are easy to be implemented in practice. The experimental results show that our algorithms can significantly outperform the existing DBSCAN algorithms in terms of running time.
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