Large Scale Spectral Clustering
with Landmark-Based Representation
Xinlei Chen Deng Cai∗
State Key Lab of CAD&CG, College of Computer Science,
Zhejiang University, China
endernewton@gmail.com, dengcai@cad.zju.edu.cn
Abstract
Spectral clustering is one of the most popular cluster-
ing approaches. Despite its good performance, it is lim-
ited in its applicability to large-scale problems due to
its high computational complexity. Recently, many ap-
proaches have been proposed to accelerate the spectral
clustering. Unfortunately, these methods usually sacri-
fice quite a lot information of the original data, thus
result in a degradation of performance. In this paper,
we propose a novel approach, called Landmark-based
Spectral Clustering (LSC), for large scale clustering
problems. Specifically, we select p ( n) representa-
tive data points as the landmarks and represent the orig-
inal data points as the linear combinations of these land-
marks. The spectral embedding of
data/Spectral/point/Land/performance/Clustering/clustering/se/orig-inal/represent/
data/Spectral/point/Land/performance/Clustering/clustering/se/orig-inal/represent/
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