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A Tighter Analysis of Spectral Clustering, and Beyond

2 August 2022
Peter Macgregor
He Sun
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Abstract

This work studies the classical spectral clustering algorithm which embeds the vertices of some graph G=(VG,EG)G=(V_G, E_G)G=(VG​,EG​) into Rk\mathbb{R}^kRk using kkk eigenvectors of some matrix of GGG, and applies kkk-means to partition VGV_GVG​ into kkk clusters. Our first result is a tighter analysis on the performance of spectral clustering, and explains why it works under some much weaker condition than the ones studied in the literature. For the second result, we show that, by applying fewer than kkk eigenvectors to construct the embedding, spectral clustering is able to produce better output for many practical instances; this result is the first of its kind in spectral clustering. Besides its conceptual and theoretical significance, the practical impact of our work is demonstrated by the empirical analysis on both synthetic and real-world datasets, in which spectral clustering produces comparable or better results with fewer than kkk eigenvectors.

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