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Computes the model based dissimilarity proposed by Piccolo.
ARPicDistance(x, y, ...)
Numeric vector containing the first time series.
Numeric vector containing the second time series.
Additional parameters for the function. See diss.AR.PIC
for more
information.
The computed distance between the pair of series.
This is simply a wrapper for the diss.AR.PIC
function of package TSclust. As such, all the functionalities of the diss.AR.PIC
function are also available when using this function.
Pablo Montero, Jos<U+00E9> A. Vilar (2014). TSclust: An R Package for Time Series Clustering. Journal of Statistical Software, 62(1), 1-43. URL http://www.jstatsoft.org/v62/i01/.
To calculate this distance measure using ts
, zoo
or xts
objects see TSDistances
. To calculate distance matrices of time series databases using this measure see TSDatabaseDistances
.
# NOT RUN {
# The objects example.series3 and example.series4 are two
# numeric series of length 100 and 120 contained in the
# TSdist package obtained from an ARIMA(3,0,2) process.
data(example.series3)
data(example.series4)
# For information on their generation and shape see
# help page of example.series.
help(example.series)
# Calculate the Piccolo distance between the two series using
# the default parameters. In this case an AR model is automatically
# selected for each of the series:
ARPicDistance(example.series3, example.series4)
# Calculate the Piccolo distance between the two series
# imposing the order of the ARMA model of each series:
ARPicDistance(example.series3, example.series4, order.x=c(3,0,2),
order.y=c(3,0,2))
# }
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