Graph-Theoretic Statistical Methods for Detecting and Localizing Distributional Change in Multivariate Data
Abstract
This dissertation explores the topic of detecting and localizing change in a series of multivariate data using graphtheoretic statistical criteria. Change-detection methods based on graph theory are emerging due to their ability to detect change of a general nature with desirable power properties. The graph-theoretic structures of minimum nonbipartite matching and nearest neighbors according to distances between observations form the basis of our statistical procedures. We consider the computation time to implement the procedures with the detection power of the derived statistics. In a simulation study, we evaluate the power of our proposed statistical tests in a series of vignettes in which the sampling distribution, dimensionality, change parameter (location or scale), change type (abrupt or gradual), and change magnitude each are allowed to vary. We compare detection power with contemporary parametric and graphtheoretic approaches. Although our tests alone do not provide the information needed to localize a change point, we develop a follow-on procedure that satisfies this objective. We illustrate our proposed statistical tests and changepoint localization techniques in an application, which demonstrates how several of the apparent limitations of our approach can be surmounted.
Document Details
- Document Type
- Technical Report
- Publication Date
- Jun 01, 2015
- Accession Number
- ADA632372
Entities
People
- Matthew A. Hawks
Organizations
- Naval Postgraduate School