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kcpRS (version 1.1.1)

Kernel Change Point Detection on the Running Statistics

Description

The running statistics of interest is first extracted using a time window which is slid across the time series, and in each window, the running statistics value is computed. KCP (Kernel Change Point) detection proposed by Arlot et al. (2012) is then implemented to flag the change points on the running statistics (Cabrieto et al., 2018, ). Change points are located by minimizing a variance criterion based on the pairwise similarities between running statistics which are computed via the Gaussian kernel. KCP can locate change points for a given k number of change points. To determine the optimal k, the KCP permutation test is first carried out by comparing the variance of the running statistics extracted from the original data to that of permuted data. If this test is significant, then there is sufficient evidence for at least one change point in the data. Model selection is then used to determine the optimal k>0.

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Version

Install

install.packages('kcpRS')

Monthly Downloads

167

Version

1.1.1

License

GPL (>= 2)

Maintainer

Kristof Meers

Last Published

October 25th, 2023

Functions in kcpRS (1.1.1)

CO2Inhalation

CO2 Inhalation Data
getScatterMatrix

Get the matrix of optimized scatters used in locating the change points.
kcpRS_workflow

KCP on the Running Statistics Workflow
runCorr

Running Correlations
permTest

KCP Permutation Test
kcpa

KCP (Kernel Change Point) Detection
runAR

Running Autocorrelations
kcpRS

KCP on the running statistics
kcpRS-package

KCP on the running statistics
runMean

Running Means
runVar

Running Variances
MentalLoad

Mental Load Data