wbs: Change-point detection via Wild Binary Segmentation
Description
The function applies the Wild Binary Segmentation algorithm to identify potential locations of the change-points in the mean of the input vector x.
The object returned by this routine can be further passed to the changepoints function,
which finds the final estimate of the change-points based on chosen stopping criteria.
Usage
wbs(x, ...)
# S3 method for default
wbs(x, M = 5000, rand.intervals = TRUE,
integrated = TRUE, ...)
Arguments
x
a numeric vector
...
not in use
M
a number of intervals used in the WBS algorithm
rand.intervals
a logical variable; if rand.intervals=TRUE intervals used in the procedure are random, thus
the output of the algorithm may slightly vary from run to run; for rand.intervals=FALSE the intervals used depend on M and the length of x only,
hence the output is always the same for given input parameters
integrated
a logical variable indicating the version of Wild Binary Segmentation algorithm used; when integrated=TRUE,
augmented version of WBS is launched, which combines WBS and BS into one
Value
an object of class "wbs", which contains the following fields
x
the input vector provided
n
the length of x
M
the number of intervals used
rand.intervals
a logical variable indicating type of intervals
integrated
a logical variable indicating type of WBS procedure
res
a 6-column matrix with results, where 's' and 'e' denote start-
end points of the intervals in which change-points candidates 'cpt' have been found;
column 'CUSUM' contains corresponding value of CUSUM statistic; 'min.th' is the smallest
threshold value for which given change-point candidate would be not added to the set of estimated
change-points; the last column is the scale at which the change-point has been found