Sensitivity of principal components to changes in the presence of non-stationarity

08/09/2022
by   Henrik M. Bette, et al.
0

Non-stationarity affects the sensitivity of change detection in correlated systems described by sets of measurable variables. We study this by projecting onto different principal components. Non-stationarity is modeled as multiple normal states that exist in the system even before a change occurs. The studied changes occur in mean values, standard deviations or correlations of the variables. Monte Carlo simulations are performed to test the sensitivity for change detection with and without knowledge about the non-stationarity for different system dimensions and numbers of normal states. A comparison clearly shows that the knowledge about the non-stationarity of the system greatly improves change detection sensitivity for all principal components. This improvement is largest for those components that already provide the greatest possibility for change detection in the stationary case.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/15/2019

Which principal components are most sensitive to distributional changes?

PCA is often used in anomaly detection and statistical process control t...
research
10/08/2019

SIMPCA: A framework for rotating and sparsifying principal components

We propose an algorithmic framework for computing sparse components from...
research
12/30/2022

Resampling Sensitivity of High-Dimensional PCA

The study of stability and sensitivity of statistical methods or algorit...
research
12/21/2014

Principal Sensitivity Analysis

We present a novel algorithm (Principal Sensitivity Analysis; PSA) to an...
research
09/29/2022

Robust Bayesian Non-segmental Detection of Multiple Change-points

Change-points detection has long been important and active research area...
research
01/09/2019

Change Detection and Notification of Webpages: A Survey

Majority of the currently available webpages are dynamic in nature and a...

Please sign up or login with your details

Forgot password? Click here to reset