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Scalable k-Means Clustering for Large k via Seeded Approximate Nearest-Neighbor Search

Authors :
Spalding-Jamieson, Jack
Robson, Eliot Wong
Zheng, Da Wei
Publication Year :
2025

Abstract

For very large values of $k$, we consider methods for fast $k$-means clustering of massive datasets with $10^7\sim10^9$ points in high-dimensions ($d\geq100$). All current practical methods for this problem have runtimes at least $\Omega(k^2)$. We find that initialization routines are not a bottleneck for this case. Instead, it is critical to improve the speed of Lloyd's local-search algorithm, particularly the step that reassigns points to their closest center. Attempting to improve this step naturally leads us to leverage approximate nearest-neighbor search methods, although this alone is not enough to be practical. Instead, we propose a family of problems we call "Seeded Approximate Nearest-Neighbor Search", for which we propose "Seeded Search-Graph" methods as a solution.<br />Comment: 29 pages, 8 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.06163
Document Type :
Working Paper