Back to Search Start Over

cuSLINK: Single-linkage Agglomerative Clustering on the GPU

Authors :
Nolet, Corey J.
Gala, Divye
Fender, Alex
Doijade, Mahesh
Eaton, Joe
Raff, Edward
Zedlewski, John
Rees, Brad
Oates, Tim
Publication Year :
2023

Abstract

In this paper, we propose cuSLINK, a novel and state-of-the-art reformulation of the SLINK algorithm on the GPU which requires only $O(Nk)$ space and uses a parameter $k$ to trade off space and time. We also propose a set of novel and reusable building blocks that compose cuSLINK. These building blocks include highly optimized computational patterns for $k$-NN graph construction, spanning trees, and dendrogram cluster extraction. We show how we used our primitives to implement cuSLINK end-to-end on the GPU, further enabling a wide range of real-world data mining and machine learning applications that were once intractable. In addition to being a primary computational bottleneck in the popular HDBSCAN algorithm, the impact of our end-to-end cuSLINK algorithm spans a large range of important applications, including cluster analysis in social and computer networks, natural language processing, and computer vision. Users can obtain cuSLINK at https://docs.rapids.ai/api/cuml/latest/api/#agglomerative-clustering<br />Comment: To appear in ECML PKDD 2023 by Springer Nature

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.16354
Document Type :
Working Paper