Sparse Convex Clustering
Document Type
Article
Publication Date
4-3-2018
Abstract
Convex clustering, a convex relaxation of k-means clustering and hierarchical clustering, has drawn recent attentions since it nicely addresses the instability issue of traditional nonconvex clustering methods. Although its computational and statistical properties have been recently studied, the performance of convex clustering has not yet been investigated in the high-dimensional clustering scenario, where the data contains a large number of features and many of them carry no information about the clustering structure. In this article, we demonstrate that the performance of convex clustering could be distorted when the uninformative features are included in the clustering. To overcome it, we introduce a new clustering method, referred to as Sparse Convex Clustering, to simultaneously cluster observations and conduct feature selection. The key idea is to formulate convex clustering in a form of regularization, with an adaptive group-lasso penalty term on cluster centers. To optimally balance the trade-off between the cluster fitting and sparsity, a tuning criterion based on clustering stability is developed. Theoretically, we obtain a finite sample error bound for our estimator and further establish its variable selection consistency. The effectiveness of the proposed method is examined through a variety of numerical experiments and a real data application. Supplementary material for this article is available online.
Identifier
85047125874 (Scopus)
Publication Title
Journal of Computational and Graphical Statistics
External Full Text Location
https://doi.org/10.1080/10618600.2017.1377081
e-ISSN
15372715
ISSN
10618600
First Page
393
Last Page
403
Issue
2
Volume
27
Recommended Citation
Wang, Binhuan; Zhang, Yilong; Sun, Will Wei; and Fang, Yixin, "Sparse Convex Clustering" (2018). Faculty Publications. 8731.
https://digitalcommons.njit.edu/fac_pubs/8731
