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onlineCOV (version 1.3)

Online Change Point Detection in High-Dimensional Covariance Structure

Description

Implement a new stopping rule to detect anomaly in the covariance structure of high-dimensional online data. The detection procedure can be applied to Gaussian or non-Gaussian data with a large number of components. Moreover, it allows both spatial and temporal dependence in data. The dependence can be estimated by a data-driven procedure. The level of threshold in the stopping rule can be determined at a pre-selected average run length. More detail can be seen in Li, L. and Li, J. (2020) "Online Change-Point Detection in High-Dimensional Covariance Structure with Application to Dynamic Networks." .

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Version

Install

install.packages('onlineCOV')

Monthly Downloads

151

Version

1.3

License

GPL (>= 2)

Maintainer

Jun Li

Last Published

March 23rd, 2020

Functions in onlineCOV (1.3)

stopping.rule

Online change-point detection by the stopping rule.
nuisance.est

Estimate nuisance parameters in the stopping rule.