Graph-based multiple change-point detection
Methodology
2021-10-05 v1
Abstract
We propose a new multiple change-point detection framework for multivariate and non-Euclidean data. First, we combine graph-based statistics with wild binary segmentation or seeded binary segmentation to search for a pool of candidate change-points. We then prune the candidate change-points through a novel goodness-of-fit statistic. Numerical studies show that this new framework outperforms existing methods under a wide range of settings. The resulting change-points can further be arranged hierarchically based on the goodness-of-fit statistic. The new framework is illustrated on a Neuropixels recording of an awake mouse.
Cite
@article{arxiv.2110.01170,
title = {Graph-based multiple change-point detection},
author = {Yuxuan Zhang and Hao Chen},
journal= {arXiv preprint arXiv:2110.01170},
year = {2021}
}