Robust and sparse k-means clustering for high-dimensional data
Abstract
In real-world application scenarios, the identification of groups poses a significant challenge due to possibly occurring outliers and existing noise variables. Therefore, there is a need for a clustering method which is capable of revealing the group structure in data containing both outliers and noise variables without any pre-knowledge. In this paper, we propose a -means-based algorithm incorporating a weighting function which leads to an automatic weight assignment for each observation. In order to cope with noise variables, a lasso-type penalty is used in an objective function adjusted by observation weights. We finally introduce a framework for selecting both the number of clusters and variables based on a modified gap statistic. The conducted experiments on simulated and real-world data demonstrate the advantage of the method to identify groups, outliers, and informative variables simultaneously.
Keywords
Cite
@article{arxiv.1709.10012,
title = {Robust and sparse k-means clustering for high-dimensional data},
author = {Sarka Brodinova and Peter Filzmoser and Thomas Ortner and Christian Breiteneder and Maia Zaharieva},
journal= {arXiv preprint arXiv:1709.10012},
year = {2017}
}