Some Clustering-based Change-point Detection Methods Applicable to High Dimension, Low Sample Size Data
Abstract
Detection of change-points in a sequence of high-dimensional observations is a very challenging problem, and this becomes even more challenging when the sample size (i.e., the sequence length) is small. In this article, we propose some change-point detection methods based on clustering, which can be conveniently used in such high dimension, low sample size situations. First, we consider the single change-point problem. Using k-means clustering based on some suitable dissimilarity measures, we propose some methods for testing the existence of a change-point and estimating its location. High-dimensional behavior of these proposed methods are investigated under appropriate regularity conditions. Next, we extend our methods for detection of multiple change-points. We carry out extensive numerical studies to compare the performance of our proposed methods with some state-of-the-art methods.
Cite
@article{arxiv.2111.14012,
title = {Some Clustering-based Change-point Detection Methods Applicable to High Dimension, Low Sample Size Data},
author = {Trisha Dawn and Angshuman Roy and Alokesh Manna and Anil K. Ghosh},
journal= {arXiv preprint arXiv:2111.14012},
year = {2021}
}
Comments
35 pages, 16 figures